Despite the successful identification of several relevant genomic loci, the underlying molecular mechanisms of schizophrenia remain largely unclear. We developed a computational approach (NETBAG+) that allows an integrated analysis of diverse disease-related genetic data using a unified statistical framework. The application of this approach to schizophrenia-associated genetic variations, obtained using unbiased whole-genome methods, allowed us to identify several cohesive gene networks related to axon guidance, neuronal cell mobility, synaptic function and chromosomal remodeling. The genes forming the networks are highly expressed in the brain, with higher brain expression during prenatal development. The identified networks are functionally related to genes previously implicated in schizophrenia, autism and intellectual disability. A comparative analysis of copy number variants associated with autism and schizophrenia suggests that although the molecular networks implicated in these distinct disorders may be related, the mutations associated with each disease are likely to lead, at least on average, to different functional consequences.

译文

:尽管成功鉴定了几个相关的基因组位点,但精神分裂症的潜在分子机制仍不清楚。我们开发了一种计算方法(NETBAG),该方法可以使用统一的统计框架对与疾病相关的多种遗传数据进行综合分析。这种方法在使用无偏态全基因组方法获得的精神分裂症相关遗传变异中的应用,使我们能够鉴定出与轴突导向,神经元细胞移动性,突触功能和染色体重塑有关的几个内聚基因网络。形成网络的基因在大脑中高度表达,在产前发育过程中大脑表达更高。所确定的网络在功能上与先前与精神分裂症,自闭症和智力障碍有关的基因有关。对与自闭症和精神分裂症有关的拷贝数变异的比较分析表明,尽管与这些独特疾病有关的分子网络可能是相关的,但与每种疾病有关的突变可能至少平均而言导致不同的功能后果。

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