Department of Psychiatry, Niigata University Graduate School of Medical and Dental Sciences, Asahimachi-dori 1-757, Niigata 951-8510, Japan.
Schizophr Res. 2010 Jun;119(1-3):210-8. doi: 10.1016/j.schres.2009.12.024. Epub 2010 Jan 18.
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.
基因表达谱微阵列技术表明,在外周血细胞可能是一个替代死后脑组织的精神分裂症的研究。一个可访问的外周生物标志物的发展将大大有助于在这个疾病的诊断。我们使用生物信息学的方法来研究全血中的基因表达特征是否包含足够的信息来作出精神分裂症的具体诊断。未配对的 t 检验的基因表达数据集从 52 抗精神病药免费精神分裂症患者和 49 例正常对照中鉴定出 792 个差异表达的探针。功能分析用 DAVID 揭示了这些基因中的 11 个是以前报道与精神分裂症有关,和 73 人在脑组织中表达。我们用一个监督分类器,人工神经网络(ANNs)分析数据集。样本被分为训练集和测试集。质量过滤和逐步向前选择确定了 14 个探针作为诊断的预测因子。人工神经网络(ANNs)的训练与选定的探针作为输入和训练集的已知诊断作为输出。构建的模型在训练集达到 91.2%的诊断准确率和 87.9%的准确率在保留测试集。另一方面,层次聚类,标准但无监督的分类器,未能分离患者和对照组。这些结果表明,基于血液的基因表达特征与监督分类器,人工神经网络(ANNs)的分析可能是精神分裂症的诊断工具。