Pros and cons of microarray technology in allergy research
M. Benson
Pediatric Allergy Research Group, Queen Silvia Children's Hospital, Gothenburg, Sweden,
Search for more papers by this authorM. Olsson
Pediatric Allergy Research Group, Queen Silvia Children's Hospital, Gothenburg, Sweden,
Search for more papers by this authorM. Rudemo
Department of Mathematical Statistics, Chalmers University of Technology, Gothenburg, Sweden
Search for more papers by this authorG. Wennergren
Pediatric Allergy Research Group, Queen Silvia Children's Hospital, Gothenburg, Sweden,
Search for more papers by this authorL. O. Cardell
Laboratory for Clinical and Experimental Allergy Research, Department of Oto-Rhino-Laryngology, Malmö University Hospital, Malmö, Sweden
Search for more papers by this authorM. Benson
Pediatric Allergy Research Group, Queen Silvia Children's Hospital, Gothenburg, Sweden,
Search for more papers by this authorM. Olsson
Pediatric Allergy Research Group, Queen Silvia Children's Hospital, Gothenburg, Sweden,
Search for more papers by this authorM. Rudemo
Department of Mathematical Statistics, Chalmers University of Technology, Gothenburg, Sweden
Search for more papers by this authorG. Wennergren
Pediatric Allergy Research Group, Queen Silvia Children's Hospital, Gothenburg, Sweden,
Search for more papers by this authorL. O. Cardell
Laboratory for Clinical and Experimental Allergy Research, Department of Oto-Rhino-Laryngology, Malmö University Hospital, Malmö, Sweden
Search for more papers by this author
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