Volume 13, Issue 11 e202000197
FULL ARTICLE

A rapid white blood cell classification system based on multimode imaging technology

Meng Lv

Meng Lv

State Key Laboratory of Pathogen and Biosecurity, Beijing Institute of Microbiology and Epidemiology, Beijing, China

Institute of Medical Support Technology, Academy of Military Sciences, Tianjin, China

Department of Medical Technology Support, NCO School of Army Medical University, Shijiazhuang, Hebei, China

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Xi Zhao

Xi Zhao

Graduate School, Academy of Military Sciences, Beijing, China

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Feng Chen

Feng Chen

Institute of Medical Support Technology, Academy of Military Sciences, Tianjin, China

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Ming Yu

Ming Yu

Institute of Medical Support Technology, Academy of Military Sciences, Tianjin, China

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Chao Li

Corresponding Author

Chao Li

Institute of Medical Support Technology, Academy of Military Sciences, Tianjin, China

Correspondence

Jinggong Sun, Institute of System Engineering, Academy of Military Sciences, Beijing 100141, China.

Email: [email protected]

Chao Li, Institute of Medical Support Technology, Academy of Military Science,Tianjin 300161, China.

Email: [email protected]

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Jinggong Sun

Corresponding Author

Jinggong Sun

Institute of System Engineering Research, Academy of Military Sciences, Beijing, China

Correspondence

Jinggong Sun, Institute of System Engineering, Academy of Military Sciences, Beijing 100141, China.

Email: [email protected]

Chao Li, Institute of Medical Support Technology, Academy of Military Science,Tianjin 300161, China.

Email: [email protected]

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First published: 21 July 2020
Citations: 8

Meng Lv and Chao Li contribute equally to this study.

Funding information: China National Key R & D Program Project, Grant/Award Number: 2017YFC0806403

Abstract

In order to simplify the complexity of white blood cell classification in existing point-of-care testing (POCT) testing equipment, a white blood cell classification detection system based on microfluidic and multimode imaging was constructed. Microfluidic chip was used in the system. A multimodal optical imaging system based on the characteristics of blood samples was designed to obtain eigenvalue extraction of cells. Afterward, a BP neural network model was constructed to realize automatic classification of white blood cells. Finally, 80 human blood samples were classified and detected by this system and compared with the results of Sysmex XE-5000. The consistency correlation coefficients of white blood cells, lymphocytes, monocytes, neutrophils and eosinophils are 1.038, 0.907, 0.549, 0.922 and 1.028, respectively, and the CV values of the four types of white blood cells in the stability test were all below 10%. In this study, a white blood cell classification and detection system with small size, simple operation, fast single-sample detection, high accuracy, and no maintenance is required. It will provide a solid technical support for the further development of POCT blood cell analysis equipment.image

CONFLICT OF INTEREST

The authors declare no financial or commercial conflict of interest.

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