Advantages of Next-Generation Technologies in Comparison to Standard and Commonly Used Methods in the Identification of Colonized Bacteria in the Herniated Lumbar Disc
The prevalence of low back pain (LBP) due to lumbar disc herniation (LDH) was recorded as 31.9% in the year 2022. Studies carried out around the world have failed to confirm the primary cause of disc herniation. Among the multiple hypothesized contributing factors, a low-grade bacterial infection has been identified as one of the major causes of LDH. Researchers have reported that Propionibacterium acnes (P. acnes) is the predominant bacterial species isolated using culture-derived methods. However, biofilm formation leads to a low bacterial yield in culture methods. Although culture methods remain the gold standard for the identification of bacterial species, there is a growing need for the usage of advanced techniques that are more sensitive, reliable, less time-consuming, and precise. Advancement of high-throughput sequencing tools allows thorough mining of complete bacterial profiles, even for bacteria that are challenging to cultivate in conventional laboratory settings. Currently, both high-throughput sequencing and omics have opened a new avenue, providing clear evidence for addressing queries related to bacterial contamination that have been frequently addressed in culture isolates of herniated discs over the past few decades. This review evaluates how advanced techniques in microbial identification have revolutionized our understanding of bacteria in disc health. Traditional methods confirmed the existence of known bacteria, but advanced techniques revealed a vast, previously unseen diversity, challenging the output of culture-based methods. This new information has even overturned the understanding of the role of P. acnes in evaluating disc health. Advanced techniques have opened a window to the hidden world of microbes and have been attributed to altered views on bacterial communities in healthy and herniated discs.
1. Introduction
Lumbar disc herniation (LDH) is a localized displacement of the lumbar disc that bulges out from the demarcated regions of the space contour of the intervertebral disc (IVD) [1]. LDH is one of the major contributory factors for low back pain (LBP) [2] that affects subjects of all age categories [3]. Persistent pain associated with LDH has been found to induce prolonged depressive behaviors [2]. The incidence of LDH in people with LBP was found to be 31.9% [4] and the lifetime prevalence of LBP was recorded as 83% in Japan [5]. LBP continues to hold the highest number of global burden of disease on a worldwide scale [6]. By 2050, it is suggested that 843 million people will report LBP which is a 36.4% rise compared to 2020 [6].
LDH is the rupture of the annulus fibrosus (AF) because of lumbar disc degeneration or prolonged strain on the back [7]. Compression of dorsal and/or ventral nerve roots due to bulging discs results in symptoms such as low back discomfort, leg pain (sciatica), muscular spasm, and limited trunk movement [7]. A perspective proposed by Rajasekaran et al. [8]. Suggested that disc herniation frequently occurs due to endplate junction failure rather than rupture of AF.
Although the pathophysiology under LBP is often considered multifactorial [9], etiology of LDH is not clearly understood. Invasion of microbes [9–17], physical loading [18–20], obesity [21, 22], smoking [23], local inflammatory agents [24–26], and spinopelvic parameters [27, 28] are considered as few predisposing factors. This review aims to identify the bacteria in the lumbar disc of patients with LDH using different types of updated diagnostic tools in order to select a most suitable approach.
2. Microbes in the Development of LDH
Recent studies have documented the presence of various bacteria not only in degenerated IVD [29] but also in discs that exhibit modic changes [30, 31]. The precise role of these bacterial infections still remains uncertain. Studies have shown particularly discs infected with anaerobic bacteria exhibited a higher probability of developing modic changes in adjacent vertebrae [9, 11, 32, 33].
Studies confirmed the correlation of Propionibacterium acnes (P. acnes) in the development of modic changes and disc degeneration [11, 29, 33–35]. Based on the study findings, the presence of P. acnes was revealed in more than 35% of the cultured disc samples [13]. Histological findings emphasize the involvement of P. acnes in disc degeneration, after inoculating the wild-type strain of P. acnes in the IVDs of rabbits [35]. Furthermore, a similar study carried out for bacterial culture on a herniated lumbar disc concluded the presence of various bacterial isolates such as P. acnes, Gemella morbillorum, and coagulase-negative Staphylococcus species with positive isolations for anaerobic species (6%) and for aerobic species (12%) [10]. It is strongly suspected that the presence of P. acnes could play a pivotal role in the development of LDH [13, 33–38]. Presence of P. acnes is significantly higher in herniated discs with annular tears compared to those without such a tear [39]. Several studies have proposed rationalizing the role of P. acnes in the activation of the inflammatory microenvironment and in the pathogenesis associated with lumbar disc degeneration [34, 36, 37, 40–45]. The molecular mechanism for apoptosis of NP cells through the Toll-like receptor 2 (TLR2)/Jun N-terminal kinase pathway induced by P. acnes [37] shows the expression of specific short interfering RNA and competition for the binding of TLR2 to the TLR2 antagonist (CU-CPT22). This substantially decreases the increase in Bax and cleaves the caspase-3 enzyme induced by P. acnes. This mechanism suggests that TLR2 plays an important role in the induction of apoptosis by P. acnes [37]. This pathway is called NP apoptosis mediated P. acnes through the N-terminal kinase pathway TLR2/c-Jun and mitochondrial-mediated cell death [37]. Electron microscopy observations confirmed that P. acnes triggered autophagy in a specific form known as xenophagy [37]. Autophagy programing was highlighted as vital in maintaining NP cell survival and to trigger apoptosis. Variation in autophagic flux is observed in accordance with the different stages of disc degeneration [46]. Although previous studies have used the term apoptosis, recent studies have confirmed that pyroptosis is the main mechanism, driven by P. acnes through the pyrin domain of the reactive oxygen species NLR family that contains the 3 signaling pathway (ROS-NLRP3) [42]. The NLRP3 is a well-studied multiprotein complex secreted by the immune system in response to infection and their toxins [42, 43]. In the event of pyroptosis, substantial releases of IL-1β and IL-18 occur, exerting detrimental effects on adjacent healthy NP cells and exacerbating the condition of degeneration of the lumbar disc degeneration [42, 43]. Studies further confirmed the exacerbating effects of P. acnes infection in both in vitro and in vivo (rat models) [41, 45]. The effects of pyroptosis severely affect healthy NP cells to encourage IVD for degeneration and increase the expression of TNF-alpha, IL-1β, IL-6, matrix metalloproteinase-13, a disintegrin, and metalloproteinase with thrombospondin motifs 4, 5 and negatively regulate aggrecan and collagen II [42].
The plausible biological involvement of P. acnes in degenerative disc disease is highlighted, with IL-1β identified as the primary inflammatory mechanism that instrumented the host’s response to P. acnes infection [44]. This was further supported by a few other studies [42, 43]. P. acnes stimulate the secretion of IL-1β via an interaction between P. acnes-specific pathogen-associated molecular patterns and TLR2 found on the surface of NP and AF cells [36]. This interaction leads to the activation of nuclear factor kappa B (NF-κB) signaling pathway [41, 45] and results in the production of pro-IL-1β [44]. A similar pathway results from the hyaluronidase enzyme released by P. acnes [44]. Furthermore, released hyaluronidase digests the lubricating hyaluronic acid into short fragments within the disc matrix by activating NF-κB [43]. This leads to the production of pro-IL-1β which later matures to form IL-1β. IL-1-synthesized IL-1β can activate additional signaling pathways, triggering the synthesis of matrix metalloproteinase and a disintegrin and metalloproteinase with thrombospondin motif enzymes (ADAMTSs), which is responsible for the breakdown of the extracellular matrix [43]. Consequently, damage is generated associated with the molecular patterns of P. acnes [43]. The interaction further stimulates NF-κB, giving rise to a secondary positive feedback loop [43]. As a result, intensity of inflammatory response is aggravated by the effects of the degenerative process caused by P. acnes [44].
As shown in Figure 1, during degenerative disc disease, NP and AF cells secrete IL-1β; this in turn activates proteolytic enzymes including MMPs and ADAMTS 4/5 to invade the ECM. P. acnes produces pathogen-associated molecular pattern molecules (PAMPs) and ECM degradation products damage-associated molecular pattern molecules (DAMPs) that bind to TLRs and activate the NF-κB pathway [44]. This results in continuous production of IL-1β. PAMPs promote degenerative changes by synthesizing and increasing the IL-1 concentration of IL-1β by different pathways. It binds to TLRs and activates the NF-κB pathway and results in the synthesis of pro-IL-1β. Furthermore, P. acnes PAMP also activates NLRP3 and caspase I inflammasomes to induce the activation and secretion of IL-1β. IL-1β induces the production of chemokines that lead to the entrance of proteolytic matrix MMPs into the ECM. This, in turn, further promotes the degradation process. IL-1β itself binds to IL-1R and stimulates NF-κB pathway and further increases the secretion of IL-1β. The angular fissure is a characteristic feature of a degenerated disc commonly associated with nerve growth, and IL-1β stimulates the transcription of genes corresponding to the secretion of NGF and BDNF [44].
The diagrammatic pathway of P. acnes in the activation of IL-1 transcription of IL-1β and its enrichment by actively participating in various interconnected pathways [44]. ADAMTS-4/5, a disintegrin and metalloproteinase with thrombospondin motifs 4/5; AF, annulus fibrosus; BDNF, brain-derived neurotrophic factor; DAMP, damage-associated molecular patterns; PAMP, pathogen-associated molecular patterns; NLRP3, the pyrin domain of the NLR family that contains 3; ECM, extracellular matrix; IL-1R, interleukin-1 receptor; MMP, matrix metalloproteinase; NF-κB, nuclear factor kappa B; NGF, nerve growth factor; NP, nucleus pulposus; TLR, Toll-like receptors.
3. Culture Methods and Interference due to Biofilm
The microbiologic culture method is considered as the gold standard for its high sensitivity [47]. It is approximated that only a minimal percentage, ranging from 1% to 2% of microbial species have been successfully cultured [48]. Until recently, the study of microorganisms of interest was limited to a few isolates of source materials. This restriction arose from limitations in the composition of culture medium, which did not accurately reflect and mimic the dynamic nutrient supply present in the source environment [49, 50]. Hence, many microbes that are difficult to isolate using conventional laboratory techniques are ignored to be updated using the above method [51]. Enrichment culture is commonly believed to increase the chances of isolating previously uncultured microorganisms by increasing their abundance in the culture [52]. Enrichment culture methods can be formulated and applied to establish a model to dissect mixed cultures and investigate microbial dark matter [52].
In studies focused on bacterial cultures within herniated lumbar discs, P. acnes is well documented and has received attention in the literature [9, 11, 13, 29, 32, 33, 35–37] and has been identified as an opportunistic pathogen that induces the formation of biofilms around the herniated IVD [53, 54]. Furthermore, biofilms facilitate the processing of nutrients, cross-feeding, elimination of potentially harmful metabolic by-products, and establishment of a suitable physicochemical environment, such as maintaining an optimal oxidation-reduction potential [55]. Bacterial microcommunities are protected within a biofilm, formed by their own processes, or facilitated by the naturally favorable environment within the IVD [56]. In situ demonstration of the 3D biofilm structure of P. acnes in herniated lumbar disc tissue has been confirmed by DNA stain SYTO9 in disc samples [54]. Bacterial biofilms, which arise from both the organism and the disc environment, have the potential to play a role in disc herniation and discogenic pain [56]. This is attributed to the low isolation rate in culture techniques and the decrease in sensitivity due to false negative results [53, 54]. Therefore, sonication or homogenization is highly recommended for the mechanical breakdown of the biofilm to improve the isolation rate of the culture and is essential to prevent false negatives and obtain an accurate depiction of the microbial burden [53, 54].
Table 1 summarizes the traditional culture, PCR, and sanger sequencing methods for identification of bacteria. The respective table also emphasizes how the results are aligned to narrow down toward a particular bacterial species.
Table 1.
Traditional methods used in microbial analysis.
The study recruited approximately 67 subjects. Nuclear material evacuation during surgery was not feasible in three patients and magnetic resonance imaging was not obtained in the other three patients. Among the 61 study subjects, 28 cultures were positive. Positive anaerobic culture was observed in 26 subjects and 7% of the subjects had two microbes for both aerobic and anaerobic cultures. In 3% of the subjects, only aerobic bacteria were isolated. 16S rDNA PCR was applied using universal primers in all tissues. Anaerobic disc cultures that generated positive results for P. acnes gave a single-band appearance in 16S rDNA PCR and negative cultures resulted in negative PCR
Colonies isolated from culture plates were confirmed using 16S rDNA PCR. P. acnes was detected in 21 samples (n = 80). In aerobic culture, 5/80 were CoNS species.
Anaerobic culture isolates were identified using 16S rDNA PCR. In IVD, 16 out of 76 were positive for P. acnes. Histological stain revealed the visible morphological identity of P. acnes in 7 of 15 culture positives
2. Sanger sequencing for the positive 16S rDNA samples
3. FISH and confocal microscopy
With 16S rDNA PCR, bacteria were identified in both LDH subjects (16/51) and control subjects (6/7). Sanger sequencing was performed on PCR-positive samples, where 9/16 LDH subjects and 6/7 control showed positive results for the presence of bacteria. Only two LDH samples showed alignment with P. acnes
Tissue embedded bacterial aggregates accompanied by inflammatory cells were observed in 7/51 LDH subjects. P. acnes aggregates were found in two LDH subjects
P. acnes genome count and anaerobic culture were evaluated on all discs. Culture was positive in 130 (n = 290) patients, of whom 115 patients had P. acnes. CoNS was isolated in 31 cases and 3% were identified with α-hemolytic Streptococci. Mixed growth was observed in 24 patients. For quantification, the threshold limit was defined as 1 × 103 CFU/mL. The value above (1 × 103 CFU/mL) was declared as discs with abundant P. acnes and vice versa. Cases (n = 39) of culture-positive discs were found to be abundant with P. acnes. The count of P. acnes genomes was in the range of 2 to 58,331 in P. acnes-positive discs (n = 259) where the median was 260 genomes per 500 ng of total DNA. Significant difference (p < 0.0001) in P. acnes genome count was observed in discs with abundant P. acnes compared to discs with nonabundant P. acnes
For herniated disc tissue, 6/101 reported positive for anaerobic culture and 12/101 positive for aerobic culture. Aerobic culture isolates were identified as CoNS spp. The results of the anaerobic culture revealed the presence of P. acnes and Gemella morbillorum
Anaerobic culture was performed using tryptone soy broth in 46 patients. 16S rRNA PCR was applied using specific primers for P. acnes in all culture broths. P. acnes was confirmed in 9 of 43 discs.
LDH patients (n = 120) were included, and disc samples were subjected to aerobic and anaerobic culture. 50% of the discs showed bacterial growth. Anaerobic culture isolates were identified using the Rapid ID 32A kit. Identified P. acnes when analyzed with 16S rRNA PCR for specific P. acnes primers 46/120 gave positive results
Disc tissues (n = 37) were incubated in thioglycolate broth for 14 days and the presence of P. acnes was analyzed using specific 16S rRNA PCR primers, where 62.2% gave positive results
Anaerobic and 16S rRNA specific primers for P. acnes
Disc tissues (n = 108) were inoculated in tryptic soy broth and identified using 16S rRNA PCR specific primers; 23/108 showed positive results for P. acnes
4. Applications of High-Throughput Technologies for P. acnes Identification Across Diverse Body Sites Under Disease Context
P. acnes has been identified beyond its usual residence of skin flora. The presence of P. acnes was detected in the following infections: sarcoidosis, juvenile myelomonocytic leukemia (JMML), gastric cancer, dental infections, cervical disc disease, prostate cancer, and various soft tissue infections. A substantial number of studies in the context of the identification of P. acnes in different diseases have utilized traditional methodologies, instead of high-throughput techniques [60–66].
4.1. Sarcoidosis Infection
In a study conducted by Zhao et al. (2017) in assessing the bacterial profile on the lymph node biopsy from patients diagnosed with sarcoidosis, compared with the control group and tuberculosis group using 16S high-throughput sequencing, P. acnes has been exclusively identified in sarcoidosis group, where the control group and tuberculosis group did not show the presence of P. acnes. The following study has suggested a significant involvement of P. acnes with the disease status [67].
4.2. Gastric Cancer
High-throughput 16S rRNA sequencing was employed to investigate the bacterial dysbiosis of gastric microbiota and to identify the possible bacterial involvement in the incidence of gastric cancer using the Illumina method in gastric cancer tissues and adjacent normal tissues. Sequencing data detected greater abundance of P. acnes in gastric cancer tissues when compared to control tissues. This indicated the possible bacterial dysbiosis of mucosal microbiota occurred in this disease context [68].
A similar study aimed to examine the contribution of gastric microbiota in the risk incidence of gastric cancer. 16S rRNA sequencing revealed the highest detection rate of P. acnes from the specimens, and the study concluded that individuals with increased abundance of P. acnes are at an increased risk of developing gastric cancer [69].
4.3. JMML
A case report of a two-year-old baby, diagnosed with JMML. Traditional methods fail to isolate the pathogen, and most of the antibiotics become ineffective. NGS analysis revealed the presence of overabundance of P. acnes compared to controls [70].
4.4. Endocarditis
A study has been carried out to describe the management of P. acnes with methods such as blood culture, valve culture, valve sequencing via 16S, and histopathological demonstration. Valve sequencing via 16S was declared as the most reliable diagnostic method as it detected 95% of specimens positive for P. acnes including the patients who had taken antimicrobial therapy 26 days before surgery. Furthermore, histopathological examination of all patients had been validated for active infective endocarditis, to rule out the contamination query of P. acnes [71].
4.5. Prostate Cancer
Advanced molecular diagnostic methods such as 16S rRNA and total RNA sequencing tests have been carried out to assess the technology in detecting bacterial and viral pathogens in high-grade prostate cancer tissues. 16S sequencing results confirmed the presence of P. acnes in 95% of samples examined [72]. A similar study has been conducted on tissues such as tumor, peritumor, and nontumor for the detailed analysis of microbiome which could possibly address the pathologic etiology of prostate disease background using massive ultradeep pyrosequencing method. P. acnes has been found to be the predominant genera [73].
4.6. Chronic Meningitis
A high-throughput metagenomic shotgun sequencing was carried out to detect microbes in CSF samples in conditions like before and during the times of treatments. P. acnes sequences were identified, and reduction of the sequences was observed during the treatment phase and it was concluded that P. acnes as the causative pathogen for chronic meningitis [74].
4.7. Lung Abscess in Heart Transplantation
Pulmonary lesion was assessed for matrix-assisted laser desorption ionization mass spectrometry-time of flight and 16S rRNA sequencing tests on a 29-year-old patient who has undergone cardiac transplant 10 years ago. P. acnes was identified, and it was declared that the particular patient had long-term clinical history for seborrheic dermatitis, as such it was highlighted as a possible route entry for P. acnes as an opportunistic pathogen [75].
5. Advanced Techniques Used to Determine Microbes
5.1. Sequencing of Microbes
Genomic sequencing represents an initial illustration of “big data” technology due to the vast volume of data it generates [76]. This process produces a large amount of genetic information, characterized by its complexity and diversity [77]. Sequencing platforms are classified into generation gaps such as first generation, second generation, and third generation. Next-generation sequencing (NGS) has gained widespread recognition as a sequencing platform, primarily due to its exceptional high-throughput and massive parallel sequencing of millions of short fragment DNA with extensive applications and dramatic cost reduction [78, 79]. The 16S rRNA amplicon consists of nine hypervariable regions that account for the sequence diversity observed between different bacterial species [80]. Direct sequencing of 16S rRNA genes is a widely adopted approach to evaluate the taxonomy, abundance, and functional attributes of bacterial populations within complex microbial communities [81]. This method provides powerful information on the diverse bacterial population present in various environments. Long-read amplicon sequencing is applied to focus the entire ribosomal RNA operon targeting the combined 16S-ITS-23S regions [82]. This enables the retrieval of 16S and 23S gene sequences from a single read, enhancing the resolution of microbial communities up to the strain level. This approach also improves the precision of diversity, divergence measurements, and phylogenetic estimations [83, 84].
Furthermore, metagenomic sequencing is expected to play an important role alongside traditional diagnostic methods in the detection of pathogens in a more comprehensive way [85]. This method provides crucial data for various applications, including the detection of various microbial profiles with their comprehensive characterization, such as phylogenetic analysis, precise strain-level typing, characterization of antigenic epitopes, and antibiotic resistome of emerging pathogenic genomes [17, 86] and the discovery of novel pathogens [86].
Additionally, a comprehensive analysis of raw reads is performed using selected software packages, such as quantitative insights into microbial ecology and data analysis decision and action for taxonomic classification and diversity analysis [17]. Quantitative insights into the microbial ecology package executes a series of steps, such as quality control analysis, generating a mapping file, sequence demultiplexing, sequence clustering for the establishment of taxonomic unit setting, chimera removal, and taxonomy assignment [87]. Divisive amplicon denoising algorithm package 2 introduces an innovative quality-aware model for handling Illumina amplicon errors and ensures a comprehensive amplicon workflow [88]. Predictions of taxonomic and functional profiles within metagenomic data were made using software packages, such as phylogenetic investigations of communities by reconstruction of unobserved states and statistical analysis of taxonomic and functional profiles [17].
In the realm of molecular phylogeny, the exploration of organisms or genetic relationships involves the analysis of homologous DNA or protein sequences [89]. A phylogenetic tree serves as a graphical representation that illustrates the evolutionary relationships among different bacterial species, depicting their shared ancestry and divergence [90]. DecontaMiner is a new fully automated software tool for identifying potentially contaminated organisms in NGS sequenced samples. These contaminants can come from laboratory processes or are inherent to the biological source itself [91].
A metagenomic study on cartilage end plates and NP revealed that the normal IVD microbiome exhibits comparable bacterial diversity in both the end plate and the NP regions. These findings strongly suggest the presence of an endplate–NP axis within the IVD microbiome under normal conditions [92]. This axis shares microbial species with different population sizes and may play a significant role in maintaining the equilibrium of the microbiome within the IVD [92]. Another similar study on the abundance of bacteria and their biodiversity in the normal disc, the degenerate disc, and the herniated disc using 16S rRNA NGS observed that P. acnes was present in moderate percentages in all three groups, ranking 9th in the normal disc group with 3.07%, 8th in the disc degeneration group with 3.88% and 12th in the disc herniation group, comprising 1.56% of microbial population [17]. Furthermore, analysis of bacterial abundance revealed the presence of 355 different species in normal discs, while herniated discs exhibited 322 microbial species. These findings question the “sterile” nature of healthy lumbar discs and express a broad spectrum of bacterial distribution [17].
5.2. Improved Packages to Eliminate Contaminant Taxa From Sequence Data Obtained Through High-Throughput Technologies
Making contaminant-free DNA is a difficult task. Further, when amplification techniques like real-time PCR technique is considered a minute level of contamination, it can provide a significant impact in results due to high sensitivity [93, 94]. Contaminant sequences heavily impact the result interpretation and controversial queries in low-bacterial mass environments [94–96]. When it comes to the contaminant taxa analysis for a low microbial environment, assessment for contamination in controls, particularly negative control, is vital for the possible check to discriminate true microbiota from noise data [95]. Advanced computational bioinformatics and statistical algorithms have been developed in replying to contaminant sequences that may occur from high-throughput sequencing techniques such as 16S rRNA sequencing and shotgun metagenomics. These packages increased the accuracy for the sequence retrieved for microbial identification and their abundance in samples. As such, each software works under different kinds of principles to eliminate possible contamination [97] as shown in Table 2.
Table 2.
Details of technologies and the details regarding the methodology and working mechanism in minimizing the contaminant taxon interference in final sequence data.
The selection of the above mechanism depends on the presence of actual bacterial load in the clinical sample assessed [97]. Prevalence-based contamination method is designed for samples which originally have extremely low mass for microbes where frequency-based contamination is designed for samples which have high microbial load. Decontam eliminates the external contaminant taxa and not the cross contamination [97]
Synthesizing taxonomic tree and contamination removal
Statistical, computational and mathematical-related packages and working on classification score-based comparative approach
Recentrifuge is a powerful tool working on selective-based contamination removal including crossovers. It provides a score-based approach for comparative analysis of multiple samples, mainly on low numbers of microbe’s samples, where removal of contamination is essentially addressed. It focuses on novel approaches, which include statistical, computational and mathematical methods. It inspects the classification score at every step of the process. Recentrifuge initially synthesizes taxonomic trees and detects contaminant taxa through assessing control samples, as it has fewer reads than actual. Contaminants are noted in detail with their frequency of occurrence for each taxon appearing in controls. If the same taxa are observed in other samples, then, the algorithm grades the contamination status in each sample and removes contaminants [95].
Shotgun metagenomic sequencing in human plasma [100]
Statistical modeling analysis and metadata filtering
Microbial abundance and frequency
Squeegee: This is another de novo contamination detecting package, Squeegee prediction is compared with negative control data in low-bacterial load samples and calculates the exact removal of contaminants.
Since squeegee works without any prior idea about input dataset, stable microbial distribution data documentation in different sites in the body is performed to have an accurate check whether those microbes are ubiquitous to the particular site. Further it is helpful to detect the bacterial contamination that may arise while processing due to the external environment.
Squeegee separates taxa into contaminants and original data according to sample-specific microbes relying on the microbial abundance across different datasets. Since squeegee contaminant detection tool does not rely on negative control taxa details, it detects batch specific contaminants or cross contamination. According to the above package, diverse evidence such as the species prevalence rate, metagenomic distance of the samples relevant to certain species and the coverage of genomes of the respective species is needed to predict contamination species [96].
Under this method, combined ideas of Bayes algorithm and Gibbs sampling are used to assess the data from large bacterial 16S rRNA marker gene next-generation sequencing libraries
This program employs Bayesian algorithms to figure out and quantify agents that contributed to contamination in samples by modeling how microbes from a variety of environments mix into the environment [102].
Source tracker utilized the data or information from several species, and allows parallel estimation of proportion of different source environments contributing to a particular sink environment, including the rough estimate from unknown sources [103].
K-mer frequencies: were employed to make scaffolds
Single-copy genes
A software package designed to detect contaminant metagenome assembled genomes. Several methods were established to detect and address contamination in a eukaryotic genome assembly project:
K-mer frequencies were employed to make scaffolds according to the patterns from their DNA sequences. Then, bacterial single-copy genes analysis is performed to investigate the extent or to estimate the contamination from bacterial sources available in the assembly. Advanced visualization tools can be used to visualize the contaminants and to remove it effectively [105].
A newly discovered tool, designed to assess the comprehensiveness and to assess contamination status of a genome in a variety of sources such as isolated organisms, single cells, or metagenomic samples using lineage-specific marker genes. Genome contamination assessment can be estimated using number of multicopy marker genes detected in each marker set. CheckM works under specific statistical equations to estimate the contamination. Outcomes from different strains or species that are closely related are binned into a single putative genome and identified by assessing the average amino acid identity between multicopy marker genes [107].
Genomic quality control in microbial isolates [107].
5.3. Proteomics and Metabolomics for the Identification of Bacteria in LDH
Proteomics and metabolomics have been proven to be potent platforms to unravel biochemical changes within biological systems under specific environmental conditions [108]. Although advancements have been made to enhance sensitivity and specificity in detecting proteins and small metabolites, there are still challenges in interpreting data, especially when it comes to understanding the clinical implications of pathogenic bacteria [108].
To reveal the host–microbe interaction in a clear way, differentially expressed metabolites or metabolites unique to the microbe play crucial roles in the growth, survival, and intercellular communication pathways [12]. They can serve as valuable connectors connecting various microbial genera [12]. Fluctuations in the abundance of microbial populations dictate many alterations in the composition of the body’s metabolome composition [109]. Recent advances in omics approaches, which include phylogenetic marker-based microbiome profiling, shotgun metagenomics, metatranscriptomics, metaproteomics, and metabolomics, have facilitated effective characterization of microbial communities [110]. The protein–RNA–interacting network revealed novel regulatory mechanisms and identified key genes that could play crucial roles in the pathogenesis of IVD degeneration [111]. Data extracted from transcriptomics and proteomics offer a broader and more accurate understanding of gene expression and protein synthesis within the cell [112]. When proteins related to the complement cascade were considered, matrix reorganization, apoptosis, and angiogenesis were presented exclusively in these disc tissues [113]. Proteomics is capable of quantifying protein expression at femtomole levels, as well as the details regarding bacterial viability, proliferation, and dynamic host defense responses [113]. Though extended cultures and DNA amplification can reveal the presence of bacteria, only the identification of translated protein products can confirm active infection or host defense responses in disc tissues [113]. The detection of a larger number of proteins can be attributed to amplified immune and inflammatory responses in degeneration or infection, Furthermore, this study identified a close interaction between the biological process of defense response to the bacterium and numerous degradative proteins [113].
A recent investigation of lumbar discs microbial proteomics characterization has confirmed the existence of conserved bacterial ribosomal proteins, metabolic proteins, and functional proteins [69]. These findings signify the presence of bacteria, their associated biochemical pathways, and metagenomic pathways [69]. Furthermore, proteomics impartially eliminates the possibility of in vivo contamination by introducing comprehensive biochemical pathways that elucidate the interaction between microbes and the host and represent active ongoing infection [40, 113].
An initial investigation of the profile of bacterial metabolites was carried out in degenerate discs and normal disc cells to identify the presence of bacteria within disc tissues, focusing on microbe survival, colonization, and replication of microbes [12]. The findings suggested that both the control and the degenerated discs expressed microbial metabolites. However, significant variations in parameters such as concentration, peak levels, and spectral values were observed [13]. In particular, the investigation documented 64 microbe-derived metabolites, of which 39 were exclusively associated with the presence of bacteria. Furthermore, of the 39 metabolites listed above, nine were classified as primary metabolites that were associated with bacterial growth [13]. These metabolites were found to participate in three key pathways: autoinducer-2 biosynthesis, peptidoglycan biosynthesis, and chorismate metabolism [12]. The data obtained from metabolomics were used to construct detailed metabolic pathways. Bacterial identification was facilitated by pinpointing the specific metabolite expressed within the relevant pathways. Furthermore, the study confirmed the presence of metabolites that are uniquely associated with P. acnes, intestinal flora, and Mycobacterium tuberculosis [12]. The benefits and significance of high-throughput techniques in the context of diseases are summarized in Table 3.
Table 3.
High-throughput techniques and their benefits associated with disease contexts.
High-throughput techniques
Benefits and significance
16S rRNA sequencing
16S rRNA is found to be the frequently applied region for bacterial identification [114]. It becomes a valuable tool in detecting both known and novel bacteria [115, 116]. It provides details regarding species description like searching for species taxonomy, phylogenetic studies [114], and genetic evolutionary documentation in clinical and environmental samples. It is beneficial in detecting fastidious bacteria or truly unculturable bacteria [117] and also applicable in assessing taxonomic diversity (alpha-diversity or the beta-diversity indices) of bacterial species [115, 118] to account the bacterial abundance impact on certain disease conditions, as such 16S rRNA sequencing became a successful tool in significantly differentiating healthy vs, diseased status. Bacterial abundance resulting from 16S rRNA data showed that pathogenic bacteria exist in both the control and diseased subjects in various distributions, as 16S sequence data effectively categorize bacterial diversity which is getting altered with the clinical or health status of an individual [115]. Hence, 16S data is beneficial in the health sector to discriminate healthy vs. diseased subjects in relation to relative abundance of bacteria [68, 118–122].
It is considered to be more sensitive in bacterial detection and diagnosing infections [123–125] compared to conventional PCR tests. The 16S sequencing technology contributes towards the examination of bacterial etiology towards disease context. It is also considered cost-effective and rapid. As such, reduced turnaround time compared to the standard culture method up to antibiotic-sensitive assay. Individual assessment of bacterial distribution patterns will shift the treatment or antibiotic therapeutic strategies towards personalized medicine [126].
The 16S rRNA sequencing test is also beneficial to apply as a gut screening test, which could assist in the clinical diagnosis and to investigate microbial composition. In addition, 16S data has been also applied in determining the reference range for bacterial distribution in the gut microbiota by calculating bacterial abundance, and these data were employed to establish a central 99% reference range along with confidence intervals for every target [127]. Further, 16S data can be merged with sophisticated software such as PICRUSt. PICRUSt employs a computational way for predicting functional investigation of metagenomes, and this enables the possible metabolic pathways [128].
Shotgun metagenomics
SM sequencing allows the sequencing of all nucleotides in a sample, where 16S targets the presence of bacteria sequences can be used to identify broad-based pathogens that are difficult to isolate under culture techniques such as bacteria, fungi, virus, and parasites present in a sample [129–131]. It is also considered as a beneficial approach in the context of polymicrobial infection, due to its large coverage of organisms [129, 130]. In addition, MG data have shown a significant improvement in identifying bacteria to their genus as well as species and strain level [131] when compared to 16S sanger sequencing [132].
SM has also shown significantly better sensitivity on detection of the anaerobes [133] compared to culture techniques [131]. Traditional culture methods showed poor performance, with the broad panel of pathogen involvement in particular disease context, and antibiotic consumption impacts on the result reproducibility. Only a significant number of bacterial infections caused by Pasteurella multocida and Clostridium perfringens can only be identified by SM [131]. SM is highly sensitive, as it can detect presence of bacteria even in the presence of low bacterial DNA levels in macroscopically ‘healthy tissue’ demonstrating a potential subclinical infection spread [131]. MG data can be used to calculate relative abundance of clinically important bacterial species and antibiotic resistance genes of multidrug-resistant bacteria. In addition to that, it also provides functional information of bacterial metabolic pathways and molecular functions using sophisticated metabolic analysis networks [129, 130, 134]. MG-RAST metagenomic analysis detected the virulence factors such as motility or chemotaxis and uptaking of iron components. MG data are beneficial in comprehensive characterization of bacterial strain’s resistome and virulome [133, 135]. Big data generation including taxonomic as well as functional information such as antimicrobial resistance, virulence data, and metabolic network provide advanced details in the microbiological sector. These results will enhance the explanation behind infectious pathophysiology in the near future for a betterment in medical care [131, 135]. MG studies are used to establish the prevalence of gut protozoa across different culturally diverse populations. MG has the capability to identify an unlimited number of eukaryotic symbionts in parallel by adhering to a single sampling and analysis [136]. This technique also estimates the relative bacterial abundance from gut microbiota. In addition, it also can be used to construct an in silico metabolic model called a genome scale metabolic network model for bacterial pathway prediction [137].
Proteomics
Proteomics can be applied for the detection and quantification of complete protein sets [138]. It offers a greater species-level resolution in the identification of bacteria [139] than 16S technique [140]. Proteomic techniques can be applied to compare and evaluate genetic content and protein abundance found in surface of bacterial strains [138].
This technique has been also considered as a promising tool to detect disease status, for example, prostate cancer [141]. It also aids to discover novel insights of specific protein expression during the times of acute bacterial and viral infections; as such, this approach lays the foundation for biological discoveries of innovative early therapeutic targets and identification of diagnostic as well as prognostic biomarkers associated with disease context [141–144]. Quantitative proteomics is applicable to explain the pathogen entry and underscore the understanding disease-related biomarkers behind host–microbe interaction and host protein–protein interaction during infection [145–147] and it also contributes to cellular proteome profiling of S. aureus on assessing immune response to daptomycin antibiotic treatment and to discover comprehensive analysis of infectious bacterial proteins and antibacterial molecular mechanism of daptomycin [148]. Analysis of results on metaproteomics emphasizes the variation or fluctuation in microbiome based on disease location, with the dietary habits demonstrating greatest advantage for Crohn’s disease patients with colonic engagement compared to those with ileal-only disease [149]. Proteomics has laid the foundation in immune modulation mechanisms on host–cell responses during infection where disease pathogenesis varies with steps such as engulfment, endocytosis, and other signaling pathways. These variations impact the expression patterns of adhesion and invasion proteins. The above outcomes of the study suggest that both host and pathogen factors determine commensal or infectious switching nature of certain bacteria in the human body [150].
Metabolomics
Although proteomics offers valuable information, the bottleneck part of this concept is lacking performance in identifying varieties of posttranslational modifications of a single protein that causes crosstalk among signal pathways. Metabolomics offer a comprehensive metabolic signature specific for a particular disease condition by highlighting the variation in specific metabolites. It also investigates the interaction between microbiota and disease-oriented metabolites [151–153]; as such, it provides new insights for microbial interaction which impacts disease pathologic status. The above understanding paves the way for targeted therapeutic interventions [154–157] such as drug discovery includes novel microbial metabolites with antimicrobial, anticancer, or immunomodulatory mechanisms [158]. A distinct pattern of metabolite variation associated with a particular disease context may lead to the selection of accurate biomarkers for early detection and disease monitoring precision medicine [159]. Furthermore, interconnecting metabolomics and microbiome data marks the foundation for host–microbial intervention from disease pathogenesis to management [156, 159]. Metabolomics incorporation with the machine learning approach is beneficial for early detection of diseases and to predict the outcomes of particular disease using the biomarkers or metabolites which provide significant contribution for the disease pathophysiology. Improved algorithm applications lead to disease characterization and transition of treatment strategy towards precision medicine in the future. Metabolomic machine learning predictor for diagnosis and prognosis of gastric cancer.
Abbreviations: PCR, polymerase chain reaction; PICRUSt, phylogenetic investigation of communities by reconstruction of unobserved states; MG-RAST, metagenomic rapid annotations using subsystems technology; MG, metagenomic.
6. Conclusions
Until recent years, the potential impact of microbial contamination in the disc was hypothesized not only during sampling but also during disc-based experimental processes. Advanced techniques have overcome this ambiguity by employing bioinformatic pipelines, software packages, metagenomic analysis, and biochemical pathways that produce specific functional proteins and microbial metabolic proteins. Sequencing alone may not differentiate native bacteria and contaminant taxa, as it sequences the presence of all bacterial DNA. Hence, we suggest employing appropriate contaminant removing algorithms combined with sophisticated bioinformatics packages recommended for sequencing would enhance the outcomes.
The omics laboratory, with its interactive knowledge, has not only resolved the limitations of traditional practices but has expanded the scope and outcomes. In addition, omics with different compartments such as metaproteomics, metabolomics, and transcriptomics have successfully enhanced the results from the interference of contaminant taxa by distinguishing functional bacterial components such as proteins/metabolites/transcriptomes in host biological pathways rather than merely identifying all the DNA present. Hence, these functional roles support the differentiation of actual bacterial presence from contaminant taxa. The innovation of advanced omics and sequencing techniques have revolutionized the understanding of the microbial world, revealed a world of unseen diversity, and competed with the gold standard long-term culture-based methods. The uncertainties in the culture method are rectified by the precision and comprehensiveness of these advanced high-throughput approaches, providing a much deeper understanding of microbial function and community dynamics. Metagenomics examines the combined genomic potential of a community, providing unparalleled roles into functional diversity and interspecies interactions. By dominating the unreliability of culture and enabling access to the new microbial world, these techniques fundamentally remodify our understanding of microbial communities and their roles in human health and beyond it. As such, the present review evidenced that herniated lumbar discs have a bacterial community, through the intestinal/skin/spinal axis and cutting-edge technologies is the recommended tool not only to identify microbes but also to evaluate their role in disc health.
Conflicts of Interest
The authors declare no conflicts of interest.
Funding
This study was financially supported by the University of Sri Jayewardenepura, Grant No.: ASP/01/RE/AHS/2021/87.
1Fardon D. F.,
Williams A. L.,
Dohring E. J.,
Murtagh F. R.,
Gabriel Rothman S. L., and
Sze G. K., Lumbar Disc Nomenclature: Version 2.0: Recommendations of the combined Task Forces of the North American Spine Society, the American Society of Spine Radiology, and the American Society of Neuroradiology, The Spine Journal. (2014) 14, no. 11, 2525–2545, https://doi.org/10.1016/j.spinee.2014.04.022, 2-s2.0-84908393353, 24768732.
2Cai L.,
He Q.,
Lu Y.,
Hu Y.,
Chen W.,
Wei L., and
Hu Y., Comorbidity of Pain and Depression in a Lumbar Disc Herniation Model: Biochemical Alterations and the Effects of Fluoxetine, Frontiers in Neurology. (2019) 10, https://doi.org/10.3389/fneur.2019.01022, 2-s2.0-85073150263, 31616368.
3Ganesan S.,
Acharya A. S.,
Chauhan R., and
Acharya S., Prevalence and Risk Factors for Low Back Pain in 1,355 Young Adults: A Cross-Sectional Study, Asian Spine Journal. (2017) 11, no. 4, 610–617, https://doi.org/10.4184/asj.2017.11.4.610, 2-s2.0-85028364835, 28874980.
4Azemi E. S.,
Kola I.,
Kola S., and
Tanka M., Prevalence of Lumbar Disk Herniation in Adult Patients With Low Back Pain Based in Magnetic Resonance Imaging Diagnosis, Open Access Macedonian Journal of Medical Sciences. (2022) 10, no. B, 1720–1725, https://doi.org/10.3889/oamjms.2022.8768.
5Fujii T. and
Matsudaira K., Prevalence of Low Back Pain and Factors Associated With Chronic Disabling Back Pain in Japan, European Spine Journal. (2013) 22, no. 2, 432–438, https://doi.org/10.1007/s00586-012-2439-0, 2-s2.0-84880499263, 22868456.
6Ferreira M. L.,
de Luca K.,
Haile L. M.,
Steinmetz J. D.,
Culbreth G. T.,
Cross M.,
Kopec J. A.,
Ferreira P. H.,
Blyth F. M.,
Buchbinder R.,
Hartvigsen J.,
Wu A. M.,
Safiri S.,
Woolf A. D.,
Collins G. S.,
Ong K. L.,
Vollset S. E.,
Smith A. E.,
Cruz J. A.,
Fukutaki K. G.,
Abate S. M.,
Abbasifard M.,
Abbasi-Kangevari M.,
Abbasi-Kangevari Z.,
Abdelalim A.,
Abedi A.,
Abidi H.,
Adnani Q. E. S.,
Ahmadi A.,
Akinyemi R. O.,
Alamer A. T.,
Alem A. Z.,
Alimohamadi Y.,
Alshehri M. A.,
Alshehri M. M.,
Alzahrani H.,
Amini S.,
Amiri S.,
Amu H.,
Andrei C. L.,
Andrei T.,
Antony B.,
Arabloo J.,
Arulappan J.,
Arumugam A.,
Ashraf T.,
Athari S. S.,
Awoke N.,
Azadnajafabad S.,
Bärnighausen T. W.,
Barrero L. H.,
Barrow A.,
Barzegar A.,
Bearne L. M.,
Bensenor I. M.,
Berhie A. Y.,
Bhandari B. B.,
Bhojaraja V. S.,
Bijani A.,
Bodicha B. B. A.,
Bolla S. R.,
Brazo-Sayavera J.,
Briggs A. M.,
Cao C.,
Charalampous P.,
Chattu V. K.,
Cicuttini F. M.,
Clarsen B.,
Cuschieri S.,
Dadras O.,
Dai X.,
Dandona L.,
Dandona R.,
Dehghan A.,
Demie T. G. G.,
Denova-Gutiérrez E.,
Dewan S. M. R.,
Dharmaratne S. D.,
Dhimal M. L.,
Dhimal M.,
Diaz D.,
Didehdar M.,
Digesa L. E.,
Diress M.,
do H. T.,
Doan L. P.,
Ekholuenetale M.,
Elhadi M.,
Eskandarieh S.,
Faghani S.,
Fares J.,
Fatehizadeh A.,
Fetensa G.,
Filip I.,
Fischer F.,
Franklin R. C.,
Ganesan B.,
Gemeda B. N. B.,
Getachew M. E.,
Ghashghaee A.,
Gill T. K.,
Golechha M.,
Goleij P.,
Gupta B.,
Hafezi-Nejad N.,
Haj-Mirzaian A.,
Hamal P. K.,
Hanif A.,
Harlianto N. I.,
Hasani H.,
Hay S. I.,
Hebert J. J.,
Heidari G.,
Heidari M.,
Heidari-Soureshjani R.,
Hlongwa M. M.,
Hosseini M. S.,
Hsiao A. K.,
Iavicoli I.,
Ibitoye S. E.,
Ilic I. M.,
Ilic M. D.,
Islam S. M. S.,
Janodia M. D.,
Jha R. P.,
Jindal H. A.,
Jonas J. B.,
Kabito G. G.,
Kandel H.,
Kaur R. J.,
Keshri V. R.,
Khader Y. S.,
Khan E. A.,
Khan M. J.,
Khan M. A. B.,
Khayat Kashani H. R.,
Khubchandani J.,
Kim Y. J.,
Kisa A.,
Klugarová J.,
Kolahi A. A.,
Koohestani H. R.,
Koyanagi A.,
Kumar G. A.,
Kumar N.,
Lallukka T.,
Lasrado S.,
Lee W. C.,
Lee Y. H.,
Mahmoodpoor A.,
Malagón-Rojas J. N.,
Malekpour M. R.,
Malekzadeh R.,
Malih N.,
Mehndiratta M. M.,
Mehrabi Nasab E.,
Menezes R. G.,
Mentis A. F. A.,
Mesregah M. K.,
Miller T. R.,
Mirza-Aghazadeh-Attari M.,
Mobarakabadi M.,
Mohammad Y.,
Mohammadi E.,
Mohammed S.,
Mokdad A. H.,
Momtazmanesh S.,
Monasta L.,
Moni M. A.,
Mostafavi E.,
Murray C. J. L.,
Nair T. S.,
Nazari J.,
Nejadghaderi S. A.,
Neupane S.,
Neupane Kandel S.,
Nguyen C. T.,
Nowroozi A.,
Okati-Aliabad H.,
Omer E.,
Oulhaj A.,
Owolabi M. O.,
Panda-Jonas S.,
Pandey A.,
Park E. K.,
Pawar S.,
Pedersini P.,
Pereira J.,
Peres M. F. P.,
Petcu I. R.,
Pourahmadi M.,
Radfar A.,
Rahimi-Dehgolan S.,
Rahimi-Movaghar V.,
Rahman M.,
Rahmani A. M.,
Rajai N.,
Rao C. R.,
Rashedi V.,
Rashidi M. M.,
Ratan Z. A.,
Rawaf D. L.,
Rawaf S.,
Renzaho A. M. N.,
Rezaei N.,
Rezaei Z.,
Roever L.,
Ruela G. A.,
Saddik B.,
Sahebkar A.,
Salehi S.,
Sanmarchi F.,
Sepanlou S. G.,
Shahabi S.,
Shahrokhi S.,
Shaker E.,
Shamsi M. B.,
Shannawaz M.,
Sharma S.,
Shaygan M.,
Sheikhi R. A.,
Shetty J. K.,
Shiri R.,
Shivalli S.,
Shobeiri P.,
Sibhat M. M.,
Singh A.,
Singh J. A.,
Slater H.,
Solmi M.,
Somayaji R.,
Tan K. K.,
Thapar R.,
Tohidast S. A.,
Valadan Tahbaz S.,
Valizadeh R.,
Vasankari T. J.,
Venketasubramanian N.,
Vlassov V.,
Vo B.,
Wang Y. P.,
Wiangkham T.,
Yadav L.,
Yadollahpour A.,
Yahyazadeh Jabbari S. H.,
Yang L.,
Yazdanpanah F.,
Yonemoto N.,
Younis M. Z.,
Zare I.,
Zarrintan A.,
Zoladl M.,
Vos T., and
March L. M., Global, Regional, and National Burden of Low Back Pain, 1990–2020, Its Attributable Risk Factors, and Projections to 2050: A Systematic Analysis of the Global Burden of Disease Study 2021, Lancet Rheumatology. (2023) 5, no. 6, e316–e329, https://doi.org/10.1016/S2665-9913(23)00098-X, 37273833.
7Çetin T.,
Kahraman S.,
Kızılgöz V., and
Aydın S., The Comparison Between Herniated and Non-Herniated Disc Levels Regarding Intervertebral Disc Space Height and Disc Degeneration, a Magnetic Resonance Study, Diagnostics. (2023) 13, no. 20, https://doi.org/10.3390/diagnostics13203190, 37892011.
8Rajasekaran S.,
Bajaj N.,
Tubaki V.,
Kanna R. M., and
Shetty A. P., ISSLS Prize Winner: The Anatomy of Failure in Lumbar Disc Herniation: An In Vivo, Multimodal, Prospective Study of 181 Subjects, Spine (Phila pa 1976). (2013) 38, no. 17, 1491–1500, https://doi.org/10.1097/BRS.0b013e31829a6fa6, 2-s2.0-84882452766, 23680832.
9Albert H. B.,
Lambert P.,
Rollason J.,
Sorensen J. S.,
Worthington T.,
Pedersen M. B.,
Nørgaard H. S.,
Vernallis A.,
Busch F.,
Manniche C., and
Elliott T., Does Nuclear Tissue Infected With Bacteria Following Disc Herniations Lead to Modic Changes in the Adjacent Vertebrae?, European Spine Journal. (2013) 22, no. 4, 690–696, https://doi.org/10.1007/s00586-013-2674-z, 2-s2.0-84892817080, 23397187.
10Withanage N. D.,
Pathirage S.,
Perera S.,
Peiris H., and
Athiththan L. V., Identification of Microbes in Patients With Lumbar Disc Herniation, Journal of Biosciences and Medicines. (2019) 7, no. 6, 138–148, https://doi.org/10.4236/jbm.2019.76009.
12Rajasekaran S.,
Tangavel C.,
Vasudevan G.,
Easwaran M.,
Muthurajan R.,
K S S. V. A.,
Murugan C.,
Nayagam S. M.,
Kanna R. M., and
Shetty A. P., Bacteria in Human Lumbar Discs – Subclinical Infection or Contamination? Metabolomic Evidence for Colonization, Multiplication, and Cell-Cell Cross-Talk of Bacteria, The Spine Journal. (2023) 23, no. 1, 163–177, https://doi.org/10.1016/j.spinee.2022.05.001, 35569807.
13Salehpour F.,
Aghazadeh J.,
Mirzaei F.,
Ziaeii E., and
Naseri Alavi S. A., Propionibacterium acnes Infection in Disc Material and Different Antibiotic Susceptibility in Patients With Lumbar Disc Herniation, International Journal of Spine Surgery. (2019) 13, no. 2, 146–152, https://doi.org/10.14444/6019, 2-s2.0-85066033831, 31131213.
14Tang G.,
Chen Y.,
Chen J.,
Wang Z., and
Jiang W., Higher Proportion of Low-Virulence Anaerobic Bacterial Infection in Young Patients With Intervertebral Disc Herniation, Experimental and Therapeutic Medicine. (2019) 18, no. 4, 3085–3089, https://doi.org/10.3892/etm.2019.7910, 31572548.
15Ohrt-Nissen S.,
Fritz B. G.,
Walbom J.,
Kragh K. N.,
Bjarnsholt T.,
Dahl B., and
Manniche C., Bacterial Biofilms: A Possible Mechanism for Chronic Infection in Patients With Lumbar Disc Herniation – A Prospective Proof-of-Concept Study Using Fluorescence In Situ Hybridization, APMIS. (2018) 126, no. 5, 440–447, https://doi.org/10.1111/apm.12841, 2-s2.0-85045908681, 29696720.
16Astur N.,
Maciel B. F. B.,
Doi A. M.,
Martino M. D. V.,
Basqueira M. S.,
Wajchenberg M.,
Lenza M., and
Martins D. E., Next-Generation Sequencing (NGS) to Determine Microbiome of Herniated Intervertebral Disc, The Spine Journal. (2022) 22, no. 3, 389–398, https://doi.org/10.1016/j.spinee.2021.09.005, 34547388.
17Rajasekaran S.,
Soundararajan D. C. R.,
Tangavel C.,
Muthurajan R.,
Sri Vijay Anand K. S.,
Matchado M. S.,
Nayagam S. M.,
Shetty A. P.,
Kanna R. M., and
Dharmalingam K., Human Intervertebral Discs Harbour a Unique Microbiome and Dysbiosis Determines Health and Disease, European Spine Journal. (2020) 29, no. 7, 1621–1640, https://doi.org/10.1007/s00586-020-06446-z, 32409889.
18Seidler A.,
Bergmann A.,
Jäger M.,
Ellegast R.,
Ditchen D.,
Elsner G.,
Grifka J.,
Haerting J.,
Hofmann F.,
Linhardt O.,
Luttmann A.,
Michaelis M.,
Petereit-Haack G.,
Schumann B., and
Bolm-Audorff U., Cumulative Occupational Lumbar Load and Lumbar Disc Disease – Results of a German Multi-Center Case-Control Study (EPILIFT), BMC Musculoskeletal Disorders. (2009) 10, no. 1, https://doi.org/10.1186/1471-2474-10-48, 2-s2.0-67651174655, 19422710.
19Schäfer R.,
Trompeter K.,
Fett D.,
Heinrich K.,
Funken J.,
Willwacher S.,
Brüggemann G. P., and
Platen P., The Mechanical Loading of the Spine in Physical Activities, European Spine Journal. (2023) 32, no. 9, 2991–3001, https://doi.org/10.1007/s00586-023-07733-1.
20Kuai S.,
Liu W.,
Ji R., and
Zhou W., The Effect of Lumbar Disc Herniation on Spine Loading Characteristics During Trunk Flexion and Two Types of Picking Up Activities, Journal of Healthcare Engineering. (2017) 2017, 10, https://doi.org/10.1155/2017/6294503, 2-s2.0-85021629113, 29065628, 6294503.
21Samartzis D.,
Karppinen J.,
Luk K. D. K., and
Cheung K. M. C., Body Mass Index and Its Association With Lumbar Disc Herniation and Sciatica: A Large-Scale, Population-Based Study, Global Spine Journal. (2014) 4, no. 1_Supplement, https://doi.org/10.1055/s-0034-1376593.
22Li Y.,
Shi J. J.,
Ren J.,
Guan H. S.,
Gao Y. P.,
Zhao F., and
Sun J., Relationship Between Obesity and Lumbar Disc Herniation in Adolescents, Zhongguo Gu Shang. (2020) 33, no. 8, 725–729, https://doi.org/10.12200/j.issn.1003-0034.2020.08.008, 32875762.
23Elmasry S.,
Asfour S.,
de Rivero Vaccari J. P., and
Travascio F., Effects of Tobacco Smoking on the Degeneration of the Intervertebral Disc: A Finite Element Study, PLoS One. (2015) 10, no. 8, e0136137, https://doi.org/10.1371/journal.pone.0136137, 2-s2.0-84942889676, 26301590.
24Moen A.,
Lind A. L.,
Thulin M.,
Kamali-Moghaddam M.,
Røe C.,
Gjerstad J., and
Gordh T., Inflammatory Serum Protein Profiling of Patients With Lumbar Radicular Pain One Year After Disc Herniation, International Journal of Inflammation. (2016) 2016, 8, https://doi.org/10.1155/2016/3874964, 2-s2.0-84971505848, 27293953, 3874964.
25Krock E.,
Millecamps M.,
Anderson K. M.,
Srivastava A.,
Reihsen T. E.,
Hari P.,
Sun Y. R.,
Jang S. H.,
Wilcox G. L.,
Belani K. G.,
Beebe D. S.,
Ouellet J.,
Pinto M. R.,
Kehl L. J.,
Haglund L., and
Stone L. S., Interleukin-8 as a Therapeutic Target for Chronic Low Back Pain: Upregulation in Human Cerebrospinal Fluid and Pre-Clinical Validation With Chronic Reparixin in the SPARC-Null Mouse Model, eBioMedicine. (2019) 43, 487–500, https://doi.org/10.1016/j.ebiom.2019.04.032, 2-s2.0-85064828360, 31047862.
26Jacobsen H. E.,
Khan A. N.,
Levine M. E.,
Filippi C. G., and
Chahine N. O., Severity of Intervertebral Disc Herniation Regulates Cytokine and Chemokine Levels in Patients With Chronic Radicular Back Pain, Osteoarthritis and Cartilage. (2020) 28, no. 10, 1341–1350, https://doi.org/10.1016/j.joca.2020.06.009, 32653386.
27Poonia A.,
Lodha S., and
Sharma N. C., Evaluation of Spinopelvic Parameters in Lumbar Prolapsed Intervertebral Disc, Indian Journal of Radiology and Imaging. (2020) 30, no. 3, 253–262, https://doi.org/10.4103/ijri.IJRI_49_20, 33273757.
28Tuncer C.,
Polat Ö., and
Er U., Correlation Between Spinopelvic Parameters and the Development of Lumbar Disc Herniation, Journal of Turkish Spinal Surgery. (2019) 30, no. 4, 245–248, https://doi.org/10.4274/jtss.galenos.2019.0005.
29Rajasekaran S.,
Vasudevan G.,
Easwaran M.,
Devi Ps N.,
Sri Vijay Anand K. S.,
Muthurajan R.,
Tangavel C.,
Murugan C.,
Pushpa B. T.,
Shetty A. P., and
Kanna R. M., ‘Are We Barking Up the Wrong Tree? Too Much Emphasis on Cutibacterium acnes and Ignoring Other Pathogens’- A Study Based on Next-Generation Sequencing of Normal and Diseased Discs, The Spine Journal. (2023) 23, no. 10, 1414–1426, https://doi.org/10.1016/j.spinee.2023.06.396, 37369253.
30Aghazadeh J.,
Salehpour F.,
Ziaeii E.,
Javanshir N.,
Samadi A.,
sadeghi J.,
Mirzaei F., and
Naseri Alavi S. A., Modic Changes in the Adjacent Vertebrae due to Disc Material Infection With Propionibacterium acnes in Patients With Lumbar Disc Herniation, European Spine Journal. (2017) 26, no. 12, 3129–3134, https://doi.org/10.1007/s00586-016-4887-4, 2-s2.0-84996956236, 27885471.
31Heggli I.,
Mengis T.,
Laux C. J.,
Opitz L.,
Herger N.,
Menghini D.,
Schuepbach R.,
Farshad-Amacker N. A.,
Brunner F.,
Fields A. J.,
Farshad M.,
Distler O., and
Dudli S., Low Back Pain Patients With Modic Type 1 Changes Exhibit Distinct Bacterial and Non-Bacterial Subtypes, Osteoarthritis and Cartilage Open. (2024) 6, no. 1, 100434, https://doi.org/10.1016/j.ocarto.2024.100434, 38322145.
32Singh S.,
Siddhlingeswara G. I.,
Rai A.,
Iyer R. D.,
Sharma D., and
Surana R., Correlation Between Modic Changes and Bacterial Infection: A Causative Study, International Journal of Spine Surgery. (2020) 14, no. 5, 832–837, https://doi.org/10.14444/7118, 33184123.
33Lan W.,
Wang X.,
Tu X.,
Hu X., and
Lu H., Different Phylotypes of Cutibacterium acnes Cause Different Modic Changes in Intervertebral Disc Degeneration, PLoS One. (2022) 17, no. 7, e0270982, https://doi.org/10.1371/journal.pone.0270982, 35819943.
34Dudli S.,
Liebenberg E.,
Magnitsky S.,
Miller S.,
Demir-Deviren S., and
Lotz J. C., Propionibacterium acnes Infected Intervertebral Discs Cause Vertebral Bone Marrow Lesions Consistent With Modic Changes, Journal of Orthopaedic Research. (2016) 34, no. 8, 1447–1455, https://doi.org/10.1002/jor.23265, 2-s2.0-84983681809, 27101067.
35Chen Z.,
Zheng Y.,
Yuan Y.,
Jiao Y.,
Xiao J.,
Zhou Z., and
Cao P., Modic Changes and Disc Degeneration Caused by Inoculation of Propionibacterium acnes Inside Intervertebral Discs of Rabbits: A Pilot Study, BioMed Research International. (2016) 2016, 7, 9612437, https://doi.org/10.1155/2016/9612437, 2-s2.0-84958093457, 26925420.
36Schmid B.,
Hausmann O.,
Hitzl W.,
Achermann Y., and
Wuertz-Kozak K., The Role of Cutibacterium acnes in Intervertebral Disc Inflammation, Biomedicine. (2020) 8, no. 7, https://doi.org/10.3390/biomedicines8070186, 32629986.
38Rollason J.,
McDowell A.,
Albert H. B.,
Barnard E.,
Worthington T.,
Hilton A. C.,
Vernallis A.,
Patrick S.,
Elliott T., and
Lambert P., Genotypic and Antimicrobial Characterisation of Propionibacterium acnes Isolates From Surgically Excised Lumbar Disc Herniations, BioMed Research International. (2013) 2013, 7, https://doi.org/10.1155/2013/530382, 2-s2.0-84884223517, 24066290, 530382.
40Capoor M. N.,
Konieczna A.,
McDowell A.,
Ruzicka F.,
Smrcka M.,
Jancalek R.,
Maca K.,
Lujc M.,
Ahmed F. S.,
Birkenmaier C.,
Dudli S., and
Slaby O., Pro-inflammatory and Neurotrophic Factor Responses of Cells Derived From Degenerative Human Intervertebral Discs to the opportunistic pathogen Cutibacterium acnes, International Journal of Molecular Sciences. (2021) 22, no. 5, https://doi.org/10.3390/ijms22052347, 33652921.
41Jiao Y.,
Lin Y.,
Zheng J.,
Shi L.,
Zheng Y.,
Zhang Y.,
Li J.,
Chen Z., and
Cao P., Propionibacterium acnes Contributes to Low Back Pain via Upregulation of NGF in TLR2-NF-κB/JNK or ROS Pathway, Microbes and Infection. (2022) 24, no. 6-7, 104980, https://doi.org/10.1016/j.micinf.2022.104980.
42Tang G.,
Han X.,
Lin Z.,
Qian H.,
Chen B.,
Zhou C.,
Chen Y., and
Jiang W., Propionibacterium acnes Accelerates Intervertebral Disc Degeneration by Inducing Pyroptosis of Nucleus Pulposus Cells via the ROS-NLRP3 Pathway, Oxidative Medicine and Cellular Longevity. (2021) 2021, 12, 4657014, https://doi.org/10.1155/2021/4657014, 33603947.
43He D.,
Zhou M.,
Bai Z.,
Wen Y.,
Shen J., and
Hu Z., Propionibacterium acnes Induces Intervertebral Disc Degeneration by Promoting Nucleus Pulposus Cell Pyroptosis via NLRP3-Dependent Pathway, Biochemical and Biophysical Research Communications. (2020) 526, no. 3, 772–779, https://doi.org/10.1016/j.bbrc.2020.03.161, 32265028.
44Slaby O.,
McDowell A.,
Brüggemann H.,
Raz A.,
Demir-Deviren S.,
Freemont T.,
Lambert P., and
Capoor M. N., Is IL-1β Further Evidence for the Role of Propionibacterium acnes in Degenerative Disc Disease? Lessons From the Study of the Inflammatory Skin Condition Acne vulgaris, Frontiers in Cellular and Infection Microbiology. (2018) 8, https://doi.org/10.3389/fcimb.2018.00272, 2-s2.0-85052298313, 30155445.
46Jiang W.,
Zhang X.,
Hao J.,
Shen J.,
Fang J.,
Dong W.,
Wang D.,
Zhang X.,
Shui W.,
Luo Y.,
Lin L.,
Qiu Q.,
Liu B., and
Hu Z., SIRT1 Protects Against Apoptosis by Promoting Autophagy in Degenerative Human Disc Nucleus Pulposus Cells, Scientific Reports. (2014) 4, no. 1, https://doi.org/10.1038/srep07456, 2-s2.0-84928915151, 25503852.
47Riboli D. F. M.,
Lyra J. C.,
Silva E. P.,
Valadão L. L.,
Bentlin M. R.,
Corrente J. E.,
Suppo de Souza Rugolo L. M., and
Ribeiro de Souza da Cunha M. L., Diagnostic Accuracy of Semi-Quantitative and Quantitative Culture Techniques for the Diagnosis of Catheter-Related Infections in Newborns and Molecular Typing of Isolated Microorganisms, BMC Infectious Diseases. (2014) 14, no. 1, https://doi.org/10.1186/1471-2334-14-283, 2-s2.0-84902199812, 24886379.
48Wade W., Unculturable Bacteria—The Uncharacterized Organisms That Cause Oral Infections, Journal of the Royal Society of Medicine. (2002) 95, no. 2, 81–83, https://doi.org/10.1177/014107680209500207, 11823550.
49Botero Rute L. M.,
Caro-Quintero A., and
Acosta-González A., Enhancing the Conventional Culture: The Evaluation of Several Culture Media and Growth Conditions Improves the Isolation of Ruminal Bacteria, Microbial Ecology. (2023) 87, no. 1, https://doi.org/10.1007/s00248-023-02319-2, 38082143.
50Bonnet M.,
Lagier J. C.,
Raoult D., and
Khelaifia S., Bacterial Culture Through Selective and Non-Selective Conditions: The Evolution of Culture Media in Clinical Microbiology, New Microbes New Infections. (2020) 34, 100622, https://doi.org/10.1016/j.nmni.2019.100622, 31956419.
51Connon S. A. and
Giovannoni S. J., High-Throughput Methods for Culturing Microorganisms in Very-Low-Nutrient Media Yield Diverse New Marine Isolates, Applied and Environmental Microbiology. (2002) 68, no. 8, 3878–3885, https://doi.org/10.1128/AEM.68.8.3878-3885.2002, 2-s2.0-0036324056, 12147485.
52Mu D. S.,
Liang Q. Y.,
Wang X. M.,
Lu D. C.,
Shi M. J.,
Chen G. J., and
Du Z. J., Metatranscriptomic and Comparative Genomic Insights Into Resuscitation Mechanisms During Enrichment Culturing, Microbiome. (2018) 6, no. 1, https://doi.org/10.1186/s40168-018-0613-2, 2-s2.0-85059238105, 30587241.
53Capoor M. N.,
Ruzicka F.,
Machackova T.,
Jancalek R.,
Smrcka M.,
Schmitz J. E.,
Hermanova M.,
Sana J.,
Michu E.,
Baird J. C.,
Ahmed F. S.,
Maca K.,
Lipina R.,
Alamin T. F.,
Coscia M. F.,
Stonemetz J. L.,
Witham T.,
Ehrlich G. D.,
Gokaslan Z. L.,
Mavrommatis K.,
Birkenmaier C.,
Fischetti V. A., and
Slaby O., Prevalence of Propionibacterium acnes in Intervertebral Discs of Patients Undergoing Lumbar Microdiscectomy: A Prospective Cross-Sectional Study, PLoS One. (2016) 11, no. 8, e0161676, https://doi.org/10.1371/journal.pone.0161676, 2-s2.0-84984796503, 27536784.
54Capoor M. N.,
Ruzicka F.,
Schmitz J. E.,
James G. A.,
Machackova T.,
Jancalek R.,
Smrcka M.,
Lipina R.,
Ahmed F. S.,
Alamin T. F.,
Anand N.,
Baird J. C.,
Bhatia N.,
Demir-Deviren S.,
Eastlack R. K.,
Fisher S.,
Garfin S. R.,
Gogia J. S.,
Gokaslan Z. L.,
Kuo C. C.,
Lee Y. P.,
Mavrommatis K.,
Michu E.,
Noskova H.,
Raz A.,
Sana J.,
Shamie A. N.,
Stewart P. S.,
Stonemetz J. L.,
Wang J. C.,
Witham T. F.,
Coscia M. F.,
Birkenmaier C.,
Fischetti V. A., and
Slaby O., Propionibacterium acnes Biofilm Is Present in Intervertebral Discs of Patients Undergoing Microdiscectomy, PLoS One. (2017) 12, no. 4, e0174518, https://doi.org/10.1371/journal.pone.0174518, 2-s2.0-85016602260, 28369127.
56Coscia M. F.,
Denys G. A., and
Wack M. F., Propionibacterium acnes, Coagulase-Negative Staphylococcus, and the ‘Biofilm-Like’ Intervertebral Disc, Spine. (2016) 41, no. 24, 1860–1865, https://doi.org/10.1097/BRS.0000000000001909, 2-s2.0-84988709964, 27669046.
58Ozger O. and
Kaplan N., Aerobic Culture Results of Samples Taken During Lumbar Disc Herniation Operations, Annals of Medical of Research. (2020) 27, no. 10, 2580–2584, https://doi.org/10.5455/annalsmedres.2020.05.541.
59Najafi S.,
Mahmoudi P.,
Bassampour S. A.,
Shekarchi B.,
Soleimani M., and
Mohammadimehr M., Molecular Detection of Propionibacterium acnes in Biopsy Samples of Intervertebral Disc With Modic Changes in Patients Undergoing Herniated Disc Surgery, Iranian Journal of Microbiology. (2020) 12, no. 6, 516–521, https://doi.org/10.18502/ijm.v12i6.5025, 33613905.
61Isshiki T.,
Homma S.,
Eishi Y.,
Yabe M.,
Koyama K.,
Nishioka Y.,
Yamaguchi T.,
Uchida K.,
Yamamoto K.,
Ohashi K.,
Arakawa A.,
Shibuya K.,
Sakamoto S., and
Kishi K., Immunohistochemical Detection of Propionibacterium acnes in Granulomas for Differentiating Sarcoidosis From Other Granulomatous Diseases Utilizing an Automated System With a Commercially Available PAB Antibody, Microorganisms. (2021) 9, no. 8, https://doi.org/10.3390/microorganisms9081668, 34442747.
62Uchida K.,
Furukawa A.,
Yoneyama A.,
Furusawa H.,
Kobayashi D.,
Ito T.,
Yamamoto K.,
Sekine M.,
Miura K.,
Akashi T.,
Eishi Y., and
Ohashi K., Propionibacterium acnes-Derived Circulating Immune Complexes in Sarcoidosis Patients, Microorganisms. (2021) 9, no. 11, https://doi.org/10.3390/microorganisms9112194, 34835320.
63Manente L.,
Gargiulo U.,
Gargiulo P., and
Dovinola G., Propionibacterium acnes in Urine and Semen Samples From Men With Urinary Infection, Archivio Italiano di Urologia, Andrologia. (2022) 94, no. 1, 62–64, https://doi.org/10.4081/aiua.2022.1.62, 35352527.
64Asakawa N.,
Uchida K.,
Sakakibara M.,
Omote K.,
Noguchi K.,
Tokuda Y.,
Kamiya K.,
Hatanaka K. C.,
Matsuno Y.,
Yamada S.,
Asakawa K.,
Fukasawa Y.,
Nagai T.,
Anzai T.,
Ikeda Y.,
Ishibashi-Ueda H.,
Hirota M.,
Orii M.,
Akasaka T.,
Uto K.,
Shingu Y.,
Matsui Y.,
Morimoto S. I.,
Tsutsui H., and
Eishi Y., Immunohistochemical Identification of Propionibacterium acnes in Granuloma and Inflammatory Cells of Myocardial Tissues Obtained From Cardiac Sarcoidosis Patients, PLoS One. (2017) 12, no. 7, e0179980, https://doi.org/10.1371/journal.pone.0179980, 2-s2.0-85021856667, 28686683.
65Dadashi M.,
Eslami G.,
Taghavi A.,
Goudarzi H.,
Hajikhani B.,
Goudarzi M., and
Ghazi M., Is Propionibacterium acnes A Causative Agent in Benign Prostate Hyperplasia and Prostate Cancer?, Archives of Clinical Infectious Diseases. (2018) 13, no. 3, e58947, https://doi.org/10.5812/archcid.58947, 2-s2.0-85051361835.
67Zhao M. M.,
Du S. S.,
Li Q. H.,
Chen T.,
Qiu H.,
Wu Q.,
Chen S. S.,
Zhou Y.,
Zhang Y.,
Hu Y.,
Su Y. L.,
Shen L.,
Zhang F.,
Weng D., and
Li H. P., High Throughput 16SrRNA Gene Sequencing Reveals the Correlation Between Propionibacterium acnes and Sarcoidosis, Respiratory Research. (2017) 18, no. 1, https://doi.org/10.1186/s12931-017-0515-z, 2-s2.0-85011015305, 28143482.
68Li Q.,
Wu W.,
Gong D.,
Shang R.,
Wang J., and
Yu H., Propionibacterium acnes Overabundance in Gastric Cancer Promote M2 Polarization of Macrophages via a TLR4/PI3K/Akt Signaling, Gastric Cancer. (2021) 24, no. 6, 1242–1253, https://doi.org/10.1007/s10120-021-01202-8, 34076786.
69Gunathilake M. N.,
Lee J.,
Choi I. J.,
Kim Y. I.,
Ahn Y.,
Park C., and
Kim J., Association Between the Relative Abundance of Gastric Microbiota and the Risk of Gastric Cancer: A Case-Control Study, Scientific Reports. (2019) 9, no. 1, 13589, https://doi.org/10.1038/s41598-019-50054-x, 2-s2.0-85072408856, 31537876.
70Ye M.,
Wei W.,
Yang Z.,
Li Y.,
Cheng S.,
Wang K.,
Zhou T.,
Sun J.,
Liu S.,
Ni N.,
Jiang H., and
Jiang H., Rapid Diagnosis of Propionibacterium acnes Infection in Patient With Hyperpyrexia After Hematopoietic Stem Cell Transplantation by Next-Generation Sequencing: A Case Report, BMC Infectious Diseases. (2016) 16, no. 1, https://doi.org/10.1186/s12879-015-1306-0, 2-s2.0-84953397985, 26743541.
71Banzon J. M.,
Rehm S. J.,
Gordon S. M.,
Hussain S. T.,
Pettersson G. B., and
Shrestha N. K., Propionibacterium acnes Endocarditis: A Case Series, Clinical Microbiology and Infection. (2017) 23, no. 6, 396–399, https://doi.org/10.1016/j.cmi.2016.12.026, 2-s2.0-85013426779, 28057559.
72Yow M. A.,
Tabrizi S. N.,
Severi G.,
Bolton D. M.,
Pedersen J.,
Australian Prostate Cancer BioResource,
Giles G. G., and
Southey M. C., Characterisation of Microbial Communities Within Aggressive Prostate Cancer Tissues, Infectious Agents and Cancer. (2017) 12, no. 1, https://doi.org/10.1186/s13027-016-0112-7, 2-s2.0-85009508834, 28101126.
73Cavarretta I.,
Ferrarese R.,
Cazzaniga W.,
Saita D.,
Lucianò R.,
Ceresola E. R.,
Locatelli I.,
Visconti L.,
Lavorgna G.,
Briganti A.,
Nebuloni M.,
Doglioni C.,
Clementi M.,
Montorsi F.,
Canducci F., and
Salonia A., The Microbiome of the Prostate Tumor Microenvironment, European Urology. (2017) 72, no. 4, 625–631, https://doi.org/10.1016/j.eururo.2017.03.029, 2-s2.0-85018632944, 28434677.
74Wylie K. M.,
Blanco-Guzman M.,
Wylie T. N.,
Lawrence S. J.,
Ghobadi A.,
DiPersio J. F., and
Storch G. A., High-Throughput Sequencing of Cerebrospinal Fluid for Diagnosis of Chronic Propionibacterium acnes Meningitis in an Allogeneic Stem Cell Transplant Recipient, Transplant Infectious Disease. (2016) 18, no. 2, 227–233, https://doi.org/10.1111/tid.12512, 2-s2.0-84962761542, 26895706.
75Veitch D.,
Abioye A.,
Morris-Jones S., and
McGregor A., Propionibacterium acnes as a Cause of Lung Abscess in a Cardiac Transplant Recipient, Case Reports. (2015) 2015, https://doi.org/10.1136/bcr-2015-212431, 2-s2.0-84954233902.
76Cremin C. J.,
Dash S., and
Huang X., Big Data: Historic Advances and Emerging Trends in Bomedical Research, Current Research in Biotechnology. (2022) 4, 138–151, https://doi.org/10.1016/j.crbiot.2022.02.004.
77Phillips K. A.,
Trosman J. R.,
Kelley R. K.,
Pletcher M. J.,
Douglas M. P., and
Weldon C. B., Genomic Sequencing: Assessing the Health Care System, Policy, and Big-Data Implications, Health Affairs. (2014) 33, no. 7, 1246–1253, https://doi.org/10.1377/hlthaff.2014.0020, 2-s2.0-84905979411, 25006153.
78Gupta N. and
Verma V. K., Next-Generation Sequencing and Its Application: Empowering in Public Health Beyond Reality, Microbial Technology for the Welfare of Society. (2019) 17, 313–341, https://doi.org/10.1007/978-981-13-8844-6_15.
79Singh R. R., Next-Generation Sequencing in High-Sensitive Detection of Mutations in Tumors: Challenges, Advances, and Applications, The Journal of Molecular Diagnostics. (2020) 22, no. 8, 994–1007, https://doi.org/10.1016/j.jmoldx.2020.04.213, 32480002.
80Chakravorty S.,
Helb D.,
Burday M.,
Connell N., and
Alland D., A Detailed Analysis of 16S Ribosomal RNA Gene Segments for the Diagnosis of Pathogenic Bacteria, Journal of Microbiological Methods. (2007) 69, no. 2, 330–339, https://doi.org/10.1016/j.mimet.2007.02.005, 2-s2.0-34147182303, 17391789.
81Azaroual S. E.,
Kasmi Y.,
Aasfar A.,
el Arroussi H.,
Zeroual Y.,
el Kadiri Y.,
Zrhidri A.,
Elfahime E.,
Sefiani A., and
Meftah Kadmiri I., Investigation of Bacterial Diversity Using 16S rRNA Sequencing and Prediction of Its Functionalities in Moroccan Phosphate Mine Ecosystem, Scientific Reports. (2022) 12, no. 1, https://doi.org/10.1038/s41598-022-07765-5, 35260670.
82Olivier S. A.,
Bull M. K.,
Strube M. L.,
Murphy R.,
Ross T.,
Bowman J. P., and
Chapman B., Long-Read MinION Sequencing of 16S and 16S-ITS-23S rRNA Genes Provides Species-Level Resolution of Lactobacillaceae in Mixed Communities, Frontiers in Microbiology. (2023) 14, 1290756, https://doi.org/10.3389/fmicb.2023.1290756, 38143859.
83Cuscó A.,
Catozzi C.,
Viñes J.,
Sanchez A., and
Francino O., Microbiota Profiling With Long Amplicons Using Nanopore Sequencing: Full-Length 16S rRNA Gene and the 16S-ITS-23S of the rrn Operon, F1000Research. (2018) 7, https://doi.org/10.12688/f1000research.16817.2, 30815250.
84de Oliveira Martins L.,
Page A. J.,
Mather A. E., and
Charles I. G., Taxonomic Resolution of the Ribosomal RNA Operon in Bacteria: Implications for Its Use With Long-Read Sequencing, NAR Genomics and Bioinformatics. (2020) 2, no. 1, lqz016, https://doi.org/10.1093/nargab/lqz016, 33575567.
85Li X. X.,
Niu C. Z.,
Zhao Y. C.,
Fu G. W.,
Zhao H.,
Huang M. J., and
Li J., Clinical Application of Metagenomic Next-Generation Sequencing in Non-Immunocompromised Patients With Severe Pneumonia Supported by Veno-Venous Extracorporeal Membrane Oxygenation, Frontiers in Cellular and Infection Microbiology. (2023) 13, 1269853, https://doi.org/10.3389/fcimb.2023.1269853.
86Schuele L.,
Lizarazo-Forero E.,
Strutzberg-Minder K.,
Schütze S.,
Löbert S.,
Lambrecht C.,
Harlizius J.,
Friedrich A. W.,
Peter S.,
Rossen J. W. A., and
Couto N., Application of Shotgun Metagenomics Sequencing and Targeted Sequence Capture to Detect Circulating Porcine Viruses in the Dutch-German Border Region, Transboundary and Emerging Diseases. (2022) 69, no. 4, 2306–2319, https://doi.org/10.1111/tbed.14249, 34347385.
87Sierra M. A.,
Li Q.,
Pushalkar S.,
Paul B.,
Sandoval T. A.,
Kamer A. R.,
Corby P.,
Guo Y.,
Ruff R. R.,
Alekseyenko A. V.,
Li X., and
Saxena D., The Influences of Bioinformatics Tools and Reference Databases in Analyzing the Human Oral Microbial Community, Genes. (2020) 11, no. 8, https://doi.org/10.3390/genes11080878, 32756341.
88Callahan B. J.,
McMurdie P. J.,
Rosen M. J.,
Han A. W.,
Johnson A. J. A., and
Holmes S. P., DADA2: High-Resolution Sample Inference From Illumina Amplicon Data, Nature Methods. (2016) 13, no. 7, 581–583, https://doi.org/10.1038/nmeth.3869, 2-s2.0-84969871954, 27214047.
89Jacques F.,
Bolivar P.,
Pietras K., and
Hammarlund E. U., Roadmap to the Study of Gene and Protein Phylogeny and Evolution—A Practical Guide, PLoS One. (2023) 18, no. 2, e0279597, https://doi.org/10.1371/journal.pone.0279597, 36827278.
90MacDonald T. and
Wiley E. O., Communicating Phylogeny: Evolutionary Tree Diagrams in Museums, Evolution: Education and Outreach. (2012) 5, no. 1, 14–28, https://doi.org/10.1007/s12052-012-0387-0, 2-s2.0-85067264689.
91Sangiovanni M.,
Granata I.,
Thind A. S., and
Guarracino M. R., From Trash to Treasure: Detecting Unexpected Contamination in Unmapped NGS Data, BMC Bioinformatics. (2019) 20, no. S4, https://doi.org/10.1186/s12859-019-2684-x, 2-s2.0-85064436177, 30999839.
92Shanmuganathan R.,
Tangavel C.,
K S S. V. A.,
Muthurajan R.,
Nayagam S. M.,
Matchado M. S.,
Rajendran S.,
Kanna R. M., and
Shetty A. P., Comparative Metagenomic Analysis of Human Intervertebral Disc Nucleus Pulposus and Cartilaginous End Plates, Frontiers in Cardiovascular Medicine. (2022) 9, 927652, https://doi.org/10.3389/fcvm.2022.927652, 36247458.
93Corless C. E.,
Guiver M.,
Borrow R.,
Edwards-Jones V.,
Kaczmarski E. B., and
Fox A. J., Contamination and Sensitivity Issues With a Real-Time Universal 16S rRNA PCR, Journal of Clinical Microbiology. (2000) 38, no. 5, 1747–1752, https://doi.org/10.1128/jcm.38.5.1747-1752.2000, 10790092.
94Salter S. J.,
Cox M. J.,
Turek E. M.,
Calus S. T.,
Cookson W. O.,
Moffatt M. F.,
Turner P.,
Parkhill J.,
Loman N. J., and
Walker A. W., Reagent and Laboratory Contamination Can Critically Impact Sequence-Based Microbiome Analyses, BMC Biology. (2014) 12, no. 1, https://doi.org/10.1186/s12915-014-0087-z, 2-s2.0-84920644670, 25387460.
96Liu Y.,
Elworth R. A. L.,
Jochum M. D.,
Aagaard K. M., and
Treangen T. J., De Novo Identification of Microbial Contaminants in Low Microbial Biomass Microbiomes With Squeegee, Nature Communications. (2022) 13, no. 1, https://doi.org/10.1038/s41467-022-34409-z, 36357382.
97Davis N. M.,
Proctor D. M.,
Holmes S. P.,
Relman D. A., and
Callahan B. J., Simple Statistical Identification and Removal of Contaminant Sequences in Marker-Gene and Metagenomics Data, Microbiome. (2018) 6, no. 1, https://doi.org/10.1186/s40168-018-0605-2, 2-s2.0-85058702671, 30558668.
98Lauder A. P.,
Roche A. M.,
Sherrill-Mix S.,
Bailey A.,
Laughlin A. L.,
Bittinger K.,
Leite R.,
Elovitz M. A.,
Parry S., and
Bushman F. D., Comparison of Placenta Samples With Contamination Controls Does Not Provide Evidence for a Distinct Placenta Microbiota, Microbiome. (2016) 4, no. 1, https://doi.org/10.1186/s40168-016-0172-3, 2-s2.0-84996604223, 27338728.
99Callahan B. J.,
DiGiulio D. B.,
Goltsman D. S. A.,
Sun C. L.,
Costello E. K.,
Jeganathan P.,
Biggio J. R.,
Wong R. J.,
Druzin M. L.,
Shaw G. M.,
Stevenson D. K.,
Holmes S. P., and
Relman D. A., Replication and Refinement of a Vaginal Microbial Signature of Preterm Birth in Two Racially Distinct Cohorts of US Women, Proceedings of the National Academy of Sciences of the United States of America. (2017) 114, no. 37, 9966–9971, https://doi.org/10.1073/pnas.1705899114, 2-s2.0-85029447994, 28847941.
100Miller R. R.,
Uyaguari-Diaz M.,
McCabe M. N.,
Montoya V.,
Gardy J. L.,
Parker S.,
Steiner T.,
Hsiao W.,
Nesbitt M. J.,
Tang P.,
Patrick D. M., and
for the CCD Study Group, Metagenomic Investigation of Plasma in Individuals With ME/CFS Highlights the Importance of Technical Controls to Elucidate Contamination and Batch Effects, PLoS One. (2016) 11, no. 11, e0165691, https://doi.org/10.1371/journal.pone.0165691, 2-s2.0-84994646167, 27806082.
101Knights D.,
Kuczynski J.,
Charlson E. S.,
Zaneveld J.,
Mozer M. C.,
Collman R. G.,
Bushman F. D.,
Knight R., and
Kelley S. T., Bayesian Community-Wide Culture-Independent Microbial Source Tracking, Nature Methods. (2011) 8, no. 9, 761–763, https://doi.org/10.1038/nmeth.1650, 2-s2.0-80052301430, 21765408.
102Unno T.,
Staley C.,
Brown C. M.,
Han D.,
Sadowsky M. J., and
Hur H. G., Fecal Pollution: New Trends and Challenges in Microbial Source Tracking Using Next-Generation Sequencing, Environmental Microbiology. (2018) 20, no. 9, 3132–3140, https://doi.org/10.1111/1462-2920.14281, 2-s2.0-85053204333, 29797757.
103McGhee J. J.,
Rawson N.,
Bailey B. A.,
Fernandez-Guerra A.,
Sisk-Hackworth L., and
Kelley S. T., Meta-SourceTracker: Application of Bayesian Source Tracking to Shotgun Metagenomics, PeerJ. (2020) 8, e8783, https://doi.org/10.7717/peerj.8783, 32231882.
104Costello E. K.,
Lauber C. L.,
Hamady M.,
Fierer N.,
Gordon J. I., and
Knight R., Bacterial Community Variation in Human Body Habitats Across Space and Time, Science. (2009) 326, no. 5960, 1694–1697, https://doi.org/10.1126/science.1177486, 2-s2.0-72949091232, 19892944.
105Delmont T. O. and
Eren A. M., Identifying Contamination With Advanced Visualization and Analysis Practices: Metagenomic Approaches for Eukaryotic Genome Assemblies, PeerJ. (2016) 4, e1839, https://doi.org/10.7717/peerj.1839, 2-s2.0-84963949105, 27069789.
106Sharon I.,
Morowitz M. J.,
Thomas B. C.,
Costello E. K.,
Relman D. A., and
Banfield J. F., Time Series Community Genomics Analysis Reveals Rapid Shifts in Bacterial Species, Strains, and Phage During Infant Gut Colonization, Genome Research. (2013) 23, no. 1, 111–120, https://doi.org/10.1101/gr.142315.112, 2-s2.0-84871956840, 22936250.
107Parks D. H.,
Imelfort M.,
Skennerton C. T.,
Hugenholtz P., and
Tyson G. W., CheckM: Assessing the Quality of Microbial Genomes Recovered From Isolates, Single Cells, and Metagenomes, Genome Research. (2015) 25, no. 7, 1043–1055, https://doi.org/10.1101/gr.186072.114, 2-s2.0-84937040910, 25977477.
108Fortuin S. and
Soares N. C., The integration of Proteomics and Metabolomics Data Paving the Way for a Better Understanding of the Mechanisms Underlying Microbial Acquired Drug Resistance, Frontiers in Medicine (Lausanne). (2022) 9, 849838, https://doi.org/10.3389/fmed.2022.849838, 35602483.
109Xu J.,
Lan Y.,
Wang X.,
Shang K.,
Liu X.,
Wang J.,
Li J.,
Yue B.,
Shao M., and
Fan Z., Multi-Omics Analysis Reveals the Host–Microbe Interactions in Aged Rhesus Macaques, Frontiers in Microbiology. (2022) 13, 993879, https://doi.org/10.3389/fmicb.2022.993879, 36238598.
110Zhang X.,
Li L.,
Butcher J.,
Stintzi A., and
Figeys D., Advancing Functional and Translational Microbiome Research Using Meta-Omics Approaches, Microbiome. (2019) 7, no. 1, https://doi.org/10.1186/s40168-019-0767-6, 31810497.
111Xu C.,
Luo S.,
Wei L.,
Wu H.,
Gu W.,
Zhou W.,
Sun B.,
Hu B.,
Zhou H.,
Liu Y.,
Chen H.,
Ye X., and
Yuan W., Integrated Transcriptome and Proteome Analyses Identify Novel Regulatory Network of Nucleus Pulposus Cells in Intervertebral Disc Degeneration, BMC Medical Genomics. (2021) 14, no. 1, https://doi.org/10.1186/s12920-021-00889-z, 33536009.
112Ørntoft T. F.,
Thykjaer T.,
Waldman F. M.,
Wolf H., and
Celis J. E., Genome-Wide Study of Gene Copy Numbers, Transcripts, and Protein Levels in Pairs of Non-Invasive and Invasive Human Transitional Cell Carcinomas, Molecular & Cellular Proteomics. (2002) 1, no. 1, 37–45, https://doi.org/10.1074/mcp.m100019-mcp200, 2-s2.0-0036052093, 12096139.
113Rajasekaran S.,
Tangavel C.,
Aiyer S. N.,
Nayagam S. M.,
Raveendran M.,
Demonte N. L.,
Subbaiah P.,
Kanna R.,
Shetty A. P., and
Dharmalingam K., ISSLS Prize in Clinical Science 2017: Is Infection the Possible Initiator of Disc Disease? An Insight From Proteomic Analysis, European Spine Journal. (2017) 26, no. 5, 1384–1400, https://doi.org/10.1007/s00586-017-4972-3, 2-s2.0-85011650241, 28168343.
114Rettedal E. A.,
Gumpert H., and
Sommer M. O. A., Cultivation-Based Multiplex Phenotyping of Human Gut Microbiota Allows Targeted Recovery of Previously Uncultured Bacteria, Nature Communications. (2014) 5, no. 1, https://doi.org/10.1038/ncomms5714, 2-s2.0-84907323900, 25163406.
115Li M. N.,
Han Q.,
Wang N.,
Wang T.,
You X. M.,
Zhang S.,
Zhang C. C.,
Shi Y. Q.,
Qiao P. Z.,
Man C. L.,
Feng T.,
Li Y. Y.,
Zhu Z.,
Quan K. J.,
Xu T. L., and
Zhang G. F., 16S rRNA Gene Sequencing for Bacterial Identification and Infectious Disease Diagnosis, Biochemical and Biophysical Research Communications. (2024) 739, 150974, https://doi.org/10.1016/j.bbrc.2024.150974, 39550863.
116Loong S. K.,
Khor C. S.,
Jafar F. L., and
AbuBakar S., Utility of 16S rDNA Sequencing for Identification of Rare Pathogenic Bacteria, Journal of Clinical Laboratory Analysis. (2016) 30, no. 6, 1056–1060, https://doi.org/10.1002/jcla.21980, 2-s2.0-84971220836, 27184222.
117McCluskey G. E.,
Tai A.,
Yii M.,
Vengesayi T.,
Robertson G.,
Perera C.,
Reed C., and
Waring L., The Use of 16S rRNA Gene Sequencing for the Diagnosis of Whipple’s Disease, Pathology (Philadelphia, Pa.). (2023) 55, no. s1, https://doi.org/10.1016/j.pathol.2022.12.106.
119Qian Y.,
Yang X.,
Xu S.,
Wu C.,
Qin N.,
Chen S. D., and
Xiao Q., Detection of Microbial 16s rRNA Gene in the Blood of Patients With Parkinson’s Disease, Frontiers in Aging Neuroscience. (2018) 10, https://doi.org/10.3389/fnagi.2018.00156, 2-s2.0-85047498393, 29881345.
120Wu X.,
Chen J.,
Xu M.,
Zhu D.,
Wang X.,
Chen Y.,
Wu J.,
Cui C.,
Zhang W., and
Yu L., 16S rDNA Analysis of Periodontal Plaque in Chronic Obstructive Pulmonary Disease and Periodontitis Patients, Journal of Oral Microbiology. (2017) 9, no. 1, https://doi.org/10.1080/20002297.2017.1324725, 28748030.
122Zhuge A.,
Li S.,
Lou P.,
Wu W.,
Wang K.,
Yuan Y.,
Xia J.,
Li B., and
Li L., Longitudinal 16S rRNA Sequencing Reveals Relationships Among Alterations of Gut Microbiota and Nonalcoholic Fatty Liver Disease Progression in Mice, Microbiology Spectrum. (2022) 10, no. 3, e0004722, https://doi.org/10.1128/spectrum.00047-22, 35647690.
124Botan A.,
Campisciano G.,
Zerbato V.,
di Bella S.,
Simonetti O.,
Busetti M.,
Toc D. A.,
Luzzati R., and
Comar M., Performance of 16S rRNA Gene Next-Generation Sequencing and the Culture Method in the Detection of Bacteria in Clinical Specimens, Diagnostics. (2024) 14, no. 13, https://doi.org/10.3390/diagnostics14131318, 39001210.
125Szymczak A.,
Ferenc S.,
Majewska J.,
Miernikiewicz P.,
Gnus J.,
Witkiewicz W., and
Dąbrowska K., Application of 16S rRNA Gene Sequencing in Helicobacter pylori Detection, PeerJ. (2020) 8, e9099, https://doi.org/10.7717/peerj.9099, 32440373.
126Xia L. P.,
Bian L. Y.,
Xu M.,
Liu Y.,
Tang A. L., and
Ye W. Q., 16S rRNA Gene Sequencing Is a Non-Culture Method of Defining the Specific Bacterial Etiology of Ventilator-Associated Pneumonia, International Journal of Clinical and Experimental Medicine. (2015) 8, no. 10, 18560–18570, 26770469.
127Almonacid D. E.,
Kraal L.,
Ossandon F. J.,
Budovskaya Y. V.,
Cardenas J. P.,
Bik E. M.,
Goddard A. D.,
Richman J., and
Apte Z. S., 16S rRNA Gene Sequencing and Healthy Reference Ranges for 28 Clinically Relevant Microbial Taxa From the Human Gut Microbiome, PLoS One. (2017) 12, no. 5, e0176555, https://doi.org/10.1371/journal.pone.0176555, 2-s2.0-85018759591, 28467461.
128Ashton J. J.,
Colquhoun C. M.,
Cleary D. W.,
Coelho T.,
Haggarty R.,
Mulder I.,
Batra A.,
Afzal N. A.,
Beattie R. M.,
Scott K. P., and
Ennis S., 16S Sequencing and Functional Analysis of the Fecal Microbiome During Treatment of Newly Diagnosed Pediatric Inflammatory Bowel Disease, Medicine (Baltimore). (2017) 96, no. 26, e7347, https://doi.org/10.1097/MD.0000000000007347, 2-s2.0-85021775905, 28658154.
129Thoendel M. J.,
Jeraldo P. R.,
Greenwood-Quaintance K. E.,
Yao J. Z.,
Chia N.,
Hanssen A. D.,
Abdel M. P., and
Patel R., Identification of Prosthetic Joint Infection Pathogens Using a Shotgun Metagenomics Approach, Clinical Infectious Diseases. (2018) 67, no. 9, 1333–1338, https://doi.org/10.1093/cid/ciy303, 2-s2.0-85050937265, 29648630.
130Andersen H.,
Connolly N.,
Bangar H.,
Staat M.,
Mortensen J.,
Deburger B., and
Haslam D. B., Use of Shotgun Metagenome Sequencing to Detect Fecal Colonization With Multidrug-Resistant Bacteria in Children, Journal of Clinical Microbiology. (2016) 54, no. 7, 1804–1813, https://doi.org/10.1128/JCM.02638-15, 2-s2.0-84976351883, 27122381.
131Rodriguez C.,
Jary A.,
Hua C.,
Woerther P. L.,
Bosc R.,
Desroches M.,
Sitterlé E.,
Gricourt G.,
de Prost N.,
Pawlotsky J. M.,
Chosidow O.,
Sbidian E.,
Decousser J. W., and
the Multidisciplinary Necrotizing Fasciitis Study Group, Pathogen Identification by Shotgun Metagenomics of Patients With Necrotizing Soft-Tissue Infections, The British Journal of Dermatology. (2020) 183, no. 1, 105–113, https://doi.org/10.1111/bjd.18611, 31610037.
132Lamoureux C.,
Surgers L.,
Fihman V.,
Gricourt G.,
Demontant V.,
Trawinski E.,
N’Debi M.,
Gomart C.,
Royer G.,
Launay N.,
le Glaunec J. M.,
Wemmert C.,
la Martire G.,
Rossi G.,
Lepeule R.,
Pawlotsky J. M.,
Rodriguez C., and
Woerther P. L., Prospective Comparison Between Shotgun Metagenomics and Sanger Sequencing of the 16S rRNA Gene for the Etiological Diagnosis of Infections, Frontiers in Microbiology. (2022) 13, 761873, https://doi.org/10.3389/fmicb.2022.761873, 35464955.
133Kimseng H.,
Rossi G.,
Danjean M.,
Jimenez-Araya B.,
Chaligne C.,
Galy A.,
Souhail B.,
Bert F.,
Leflon V.,
Fihman V.,
Caillault A.,
Demontant V.,
Seng S.,
Trawinski E.,
N’Debi M.,
Boizeau L.,
Jacquier H.,
Ronot M.,
Reizine E.,
le Roy V.,
Lefort A.,
Rodriguez C.,
Lepeule R., and
Woerther P. L., Evaluation of the Contribution of Shotgun Metagenomics in the Microbiological Diagnosis of Liver Abscesses, The Journal of Infection. (2023) 87, no. 5, 365–372, https://doi.org/10.1016/j.jinf.2023.08.004, 37604210.
134Testerman T.,
Li Z.,
Galuppo B.,
Graf J., and
Santoro N., Insights From Shotgun Metagenomics Into Bacterial Species and Metabolic Pathways Associated With NAFLD in Obese Youth, Hepatology Communications. (2022) 6, no. 8, 1962–1974, https://doi.org/10.1002/hep4.1944, 35344283.
136Lokmer A.,
Cian A.,
Froment A.,
Gantois N.,
Viscogliosi E.,
Chabé M., and
Ségurel L., Use of Shotgun Metagenomics for the Identification of Protozoa in the Gut Microbiota of Healthy Individuals From Worldwide Populations With Various Industrialization Levels, PLoS One. (2019) 14, no. 2, e0211139, https://doi.org/10.1371/journal.pone.0211139, 2-s2.0-85061154404, 30726303.
137Troci A.,
Rausch P.,
Waschina S.,
Lieb W.,
Franke A., and
Bang C., Long-Term Dietary Effects on Human Gut Microbiota Composition Employing Shotgun Metagenomics Data Analysis, Molecular Nutrition & Food Research. (2023) 67, no. 24, https://doi.org/10.1002/mnfr.202101098, 35760036.
138Karlsson R.,
Thorell K.,
Hosseini S.,
Kenny D.,
Sihlbom C.,
Sjöling Å.,
Karlsson A., and
Nookaew I., Comparative Analysis of Two Helicobacter pylori Strains Using Genomics and Mass Spectrometry-Based Proteomics, Frontiers in Microbiology. (2016) 7, https://doi.org/10.3389/fmicb.2016.01757, 2-s2.0-85006826328, 27891114.
139Jung R. H.,
Kim M.,
Bhatt B.,
Choi J. M., and
Roh J. H., Identification of Pathogenic Bacteria From Public Libraries via Proteomics Analysis, International Journal of Environmental Research and Public Health. (2019) 16, no. 6, https://doi.org/10.3390/ijerph16060912, 2-s2.0-85062943031, 30875719.
140Overmyer K. A.,
Rhoads T. W.,
Merrill A. E.,
Ye Z.,
Westphall M. S.,
Acharya A.,
Shukla S. K., and
Coon J. J., Proteomics, Lipidomics, Metabolomics, and 16S DNA Sequencing of Dental Plaque From Patients With Diabetes and Periodontal Disease, Molecular & Cellular Proteomics. (2021) 20, 100126, https://doi.org/10.1016/j.mcpro.2021.100126, 34332123.
141Zhong Q.,
Sun R.,
Aref A. T.,
Noor Z.,
Anees A.,
Zhu Y.,
Lucas N.,
Poulos R. C.,
Lyu M.,
Zhu T.,
Chen G. B.,
Wang Y.,
Ding X.,
Rutishauser D.,
Rupp N. J.,
Rueschoff J. H.,
Poyet C.,
Hermanns T.,
Fankhauser C.,
Rodríguez Martínez M.,
Shao W.,
Buljan M.,
Neumann J. F.,
Beyer A.,
Hains P. G.,
Reddel R. R.,
Robinson P. J.,
Aebersold R.,
Guo T., and
Wild P. J., Proteomic-Based Stratification of Intermediate-Risk Prostate Cancer Patients, Life Science Alliance. (2024) 7, no. 2, e202302146, https://doi.org/10.26508/lsa.202302146, 38052461.
142Oved K.,
Cohen A.,
Boico O.,
Navon R.,
Friedman T.,
Etshtein L.,
Kriger O.,
Bamberger E.,
Fonar Y.,
Yacobov R.,
Wolchinsky R.,
Denkberg G.,
Dotan Y.,
Hochberg A.,
Reiter Y.,
Grupper M.,
Srugo I.,
Feigin P.,
Gorfine M.,
Chistyakov I.,
Dagan R.,
Klein A.,
Potasman I., and
Eden E., A Novel Host-Proteome Signature for Distinguishing Between Acute Bacterial and Viral Infections, PLoS One. (2015) 10, no. 3, e0120012, https://doi.org/10.1371/journal.pone.0120012, 2-s2.0-84956638767, 25785720.
143Li Y.,
Schneider A. M.,
Mehta A.,
Sade-Feldman M.,
Kays K. R.,
Gentili M.,
Charland N. C.,
Gonye A. L. K.,
Gushterova I.,
Khanna H. K.,
LaSalle T. J.,
Lavin-Parsons K. M.,
Lilley B. M.,
Lodenstein C. L.,
Manakongtreecheep K.,
Margolin J. D.,
McKaig B. N.,
Parry B. A.,
Rojas-Lopez M.,
Russo B. C.,
Sharma N.,
Tantivit J.,
Thomas M. F.,
Regan J.,
Flynn J. P.,
Villani A. C.,
Hacohen N.,
Goldberg M. B.,
Filbin M. R., and
Li J. Z., SARS-CoV-2 Viremia Is Associated With Distinct Proteomic Pathways and Predicts COVID-19 Outcomes, The Journal of Clinical Investigation. (2021) 131, no. 13, e148635, https://doi.org/10.1172/JCI148635, 34196300.
144Kreimeyer H.,
Gonzalez C. G.,
Fondevila M. F.,
Hsu C. L.,
Hartmann P.,
Zhang X.,
Stärkel P.,
Bosques-Padilla F.,
Verna E. C.,
Abraldes J. G.,
BrownR. S.Jr., Vargas V.,
Altamirano J.,
Caballería J.,
Shawcross D. L.,
Louvet A.,
Lucey M. R.,
Mathurin P.,
Garcia-Tsao G.,
Bataller R.,
AlcHepNet Investigators,
Gonzalez D. J., and
Schnabl B., Faecal Proteomics Links Neutrophil Degranulation With Mortality in Patients With Alcohol-Associated Hepatitis, Gut. (2025) 74, no. 1, 103–115, https://doi.org/10.1136/gutjnl-2024-332730, 39033024.
145Presley L. L.,
Ye J.,
Li X.,
LeBlanc J.,
Zhang Z.,
Ruegger P. M.,
Allard J.,
McGovern D.,
Ippoliti A.,
Roth B.,
Cui X.,
Jeske D. R.,
Elashoff D.,
Goodglick L.,
Braun J., and
Borneman J., Host-Microbe Relationships in Inflammatory Bowel Disease Detected by Bacterial and Metaproteomic Analysis of the Mucosal-Luminal Interface, Inflammatory Bowel Diseases. (2012) 18, no. 3, 409–417, https://doi.org/10.1002/ibd.21793, 2-s2.0-81455145738, 21698720.
147Gerold G.,
Meissner F.,
Bruening J.,
Welsch K.,
Perin P. M.,
Baumert T. F.,
Vondran F. W.,
Kaderali L.,
Marcotrigiano J.,
Khan A. G.,
Mann M.,
Rice C. M., and
Pietschmann T., Quantitative Proteomics Identifies Serum Response Factor Binding Protein 1 as a Host Factor for Hepatitis c Virus Entry, Cell Reports. (2015) 12, no. 5, 864–878, https://doi.org/10.1016/j.celrep.2015.06.063, 2-s2.0-84938549709, 26212323.
148Ma W.,
Zhang D.,
Li G.,
Liu J.,
He G.,
Zhang P.,
Yang L.,
Zhu H.,
Xu N., and
Liang S., Antibacterial Mechanism of Daptomycin Antibiotic Against Staphylococcus aureus Based on a Quantitative Bacterial Proteome Analysis, Journal of Proteomics. (2017) 150, 242–251, https://doi.org/10.1016/j.jprot.2016.09.014, 2-s2.0-84989356182, 27693894.
149Levi Mortera S.,
Marzano V.,
Rapisarda F.,
Marangelo C.,
Pirona I.,
Vernocchi P.,
di Michele M.,
del Chierico F.,
Quintero M. A.,
Fernandez I.,
Hazime H.,
Killian R. M.,
Solis N.,
Ortega M.,
Damas O. M.,
Proksell S.,
Kerman D. H.,
Deshpande A. R.,
Garces L.,
Scaldaferri F.,
Gasbarrini A.,
Abreu M. T., and
Putignani L., Metaproteomics Reveals Diet-Induced Changes in Gut Microbiome Function According to Crohn’s Disease Location, Microbiome. (2024) 12, no. 1, https://doi.org/10.1186/s40168-024-01927-5, 39443987.
150Ayllón N.,
Jiménez-Marín Á.,
Argüello H.,
Zaldívar-López S.,
Villar M.,
Aguilar C.,
Moreno A.,
de la Fuente J., and
Garrido J. J., Comparative proteomics Reveals Differences in Host-Pathogen Interaction Between Infectious and commensal relationship with Campylobacter jejuni, Frontiers in Cellular and Infection Microbiology. (2017) 7, https://doi.org/10.3389/fcimb.2017.00145, 2-s2.0-85027511217, 28491823.
151Park Y.,
Ahn J. B.,
Kim D. H.,
Park I. S.,
Son M.,
Kim J. H.,
Ma H. W.,
Kim S. W., and
Cheon J. H., Integrated Analysis of Microbiome and Metabolome Reveals Disease-Specific Profiles in Inflammatory Bowel Diseases and Intestinal Behçet’s Disease, International Journal of Molecular Sciences. (2024) 25, no. 12, https://doi.org/10.3390/ijms25126697, 38928402.
152Jiang W.,
Lu G.,
Qiao T.,
Yu X.,
Luo Q.,
Tong J.,
Fan S.,
Chai L.,
Gao D.,
Wang R.,
Deng C.,
Lv Z., and
Li D., Integrated Microbiome and Metabolome Analysis Reveals a Distinct Microbial and Metabolic Signature in Graves’ Disease and Hypothyroidism, Heliyon. (2023) 9, no. 11, e21463, https://doi.org/10.1016/j.heliyon.2023.e21463, 38034621.
153Jacobs J. P.,
Goudarzi M.,
Singh N.,
Tong M.,
McHardy I. H.,
Ruegger P.,
Asadourian M.,
Moon B. H.,
Ayson A.,
Borneman J.,
McGovern D. P. B.,
FornaceA. J.Jr., Braun J., and
Dubinsky M., A Disease-Associated Microbial and Metabolomics State in Relatives of Pediatric Inflammatory Bowel Disease Patients, Cellular and Molecular Gastroenterology and Hepatology. (2016) 2, no. 6, 750–766, https://doi.org/10.1016/j.jcmgh.2016.06.004, 2-s2.0-84992648249, 28174747.
154Yan J.,
Duan W.,
Gao Q.,
Mao T.,
Wang M.,
Duan J., and
Li J., ENPP2 Inhibitor Improves Proliferation in AOM/DSS-Induced Colorectal Cancer Mice via Remodeling the Gut Barrier Function and Gut Microbiota Composition, Pharmacological Research. (2023) 195, 106877, https://doi.org/10.1016/j.phrs.2023.106877, 37524154.
155Wu H.,
Tang D.,
Zheng F.,
Li S.,
Zhang X.,
Yin L.,
Liu F., and
Dai Y., Identification of a Novel Interplay Between Intestinal Bacteria and Metabolites in Chinese Patients With IgA Nephropathy via Integrated Microbiome and Metabolome Approaches, Annals of Translational Medicine. (2021) 9, no. 1, https://doi.org/10.21037/atm-20-2506, 33553325.
156Bowerman K. L.,
Rehman S. F.,
Vaughan A.,
Lachner N.,
Budden K. F.,
Kim R. Y.,
Wood D. L. A.,
Gellatly S. L.,
Shukla S. D.,
Wood L. G.,
Yang I. A.,
Wark P. A.,
Hugenholtz P., and
Hansbro P. M., Disease-Associated Gut Microbiome and Metabolome Changes in Patients With Chronic Obstructive Pulmonary Disease, Nature Communications. (2020) 11, no. 1, https://doi.org/10.1038/s41467-020-19701-0, 33208745.
157Talmor-Barkan Y.,
Bar N.,
Shaul A. A.,
Shahaf N.,
Godneva A.,
Bussi Y.,
Lotan-Pompan M.,
Weinberger A.,
Shechter A.,
Chezar-Azerrad C.,
Arow Z.,
Hammer Y.,
Chechi K.,
Forslund S. K.,
Fromentin S.,
Dumas M. E.,
Ehrlich S. D.,
Pedersen O.,
Kornowski R., and
Segal E., Metabolomic and Microbiome Profiling Reveals Personalized Risk Factors for Coronary Artery Disease, Nature Medicine. (2022) 28, no. 2, 295–302, https://doi.org/10.1038/s41591-022-01686-6, 35177859.
158Cambeiro-Pérez N.,
Hidalgo-Cantabrana C.,
Moro-García M. A.,
Alonso-Arias R.,
Simal-Gándara J.,
Sánchez B., and
Martínez-Carballo E., A Metabolomics Approach Reveals Immunomodulatory Effects of Proteinaceous Molecules Derived From Gut Bacteria Over Human Peripheral Blood Mononuclear Cells, Frontiers in Microbiology. (2018) 9, https://doi.org/10.3389/fmicb.2018.02701, 2-s2.0-85056881899, 30524384.
159Zhou M.,
Fan Y.,
Xu L.,
Yu Z.,
Wang S.,
Xu H.,
Zhang J.,
Zhang L.,
Liu W.,
Wu L.,
Yu J.,
Yao H.,
Wang J., and
Gao R., Microbiome and Tryptophan Metabolomics Analysis in Adolescent Depression: Roles of the Gut Microbiota in the Regulation of Tryptophan-Derived Neurotransmitters and Behaviors in Human and Mice, Microbiome. (2023) 11, no. 1, https://doi.org/10.1186/s40168-023-01589-9, 37386523.
Please check your email for instructions on resetting your password.
If you do not receive an email within 10 minutes, your email address may not be registered,
and you may need to create a new Wiley Online Library account.
Request Username
Can't sign in? Forgot your username?
Enter your email address below and we will send you your username
If the address matches an existing account you will receive an email with instructions to retrieve your username
The full text of this article hosted at iucr.org is unavailable due to technical difficulties.