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Volume 119, Issue 1, Pages 210-218 (June 2010)


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Diagnostic classification of schizophrenia by neural network analysis of blood-based gene expression signatures

Makoto Takahashia1, Hiroshi Hayashib1, Yuichiro Watanabea, Kazushi Sawamuraa, Naoki Fukuia, Junzo Watanabea, Tsuyoshi Kitajimacd, Yoshio Yamanouchicd, Nakao Iwatacd, Katsuyoshi Mizukamie, Takafumi Horie, Kazutaka Shimodaf, Hiroshi Ujikeg, Norio Ozakidh, Kentarou Iijimab, Kazuo Takemurab, Hideyuki Aoshimab, Toshiyuki SomeyaaCorresponding Author Informationemail address

Received 3 July 2009; received in revised form 12 December 2009; accepted 20 December 2009. published online 18 January 2010.

Abstract 

Gene expression profiling with microarray technology suggests that peripheral blood cells might be a surrogate for postmortem brain tissue in studies of schizophrenia. The development of an accessible peripheral biomarker would substantially help in the diagnosis of this disease. We used a bioinformatics approach to examine whether the gene expression signature in whole blood contains enough information to make a specific diagnosis of schizophrenia. Unpaired t-tests of gene expression datasets from 52 antipsychotics-free schizophrenia patients and 49 normal controls identified 792 differentially expressed probes. Functional profiling with DAVID revealed that eleven of these genes were previously reported to be associated with schizophrenia, and 73 of them were expressed in the brain tissue. We analyzed the datasets with one of the supervised classifiers, artificial neural networks (ANNs). The samples were subdivided into training and testing sets. Quality filtering and stepwise forward selection identified 14 probes as predictors of the diagnosis. ANNs were then trained with the selected probes as the input and the training set for known diagnosis as the output. The constructed model achieved 91.2% diagnostic accuracy in the training set and 87.9% accuracy in the hold-out testing set. On the other hand, hierarchical clustering, a standard but unsupervised classifier, failed to separate patients and controls. These results suggest analysis of a blood-based gene expression signature with the supervised classifier, ANNs, might be a diagnostic tool for schizophrenia.

a Department of Psychiatry, Niigata University Graduate School of Medical and Dental Sciences, Asahimachi-dori 1-757, Niigata 951-8510, Japan

b R&D Department, SRL Inc., Tokyo 191-0031, Japan

c Department of Psychiatry, Fujita Health University School of Medicine, Aichi 470-1192, Japan

d CREST, Japan Science and Technology Agency, Saitama 332-0012, Japan

e Department of Psychiatry, Institute of Clinical Medicine, University of Tsukuba, Ibaraki 305-8575, Japan

f Department of Psychiatry, Dokkyo Medical University School of Medicine, Tochigi 321-0293, Japan

g Department of Neuropsychiatry, Okayama University Graduate School of Medicine, Dentistry and Pharmaceutical Sciences, Okayama 700-8558, Japan

h Department of Psychiatry, Nagoya University Graduate School of Medicine, Aichi 466-8550, Japan

Corresponding Author InformationCorresponding author. Tel.: +81 25 227 2210; fax: +81 25 227 0777.

1 These authors contributed equally to this work.

PII: S0920-9964(09)00615-X

doi:10.1016/j.schres.2009.12.024


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