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Identification and replication of RNA-Seq gene network modules associated with depression severity

机译:鉴定和复制与抑郁严重程度有关的RNA-Seq基因网络模块

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Genomic variation underlying major depressive disorder (MDD) likely involves the interaction and regulation of multiple genes in a network. Data-driven co-expression network module inference has the potential to account for variation within regulatory networks, reduce the dimensionality of RNA-Seq data, and detect significant gene-expression modules associated with depression severity. We performed an RNA-Seq gene co-expression network analysis of mRNA data obtained from the peripheral blood mononuclear cells of unmedicated MDD ( n =?78) and healthy control ( n =?79) subjects. Across the combined MDD and HC groups, we assigned genes into modules using hierarchical clustering with a dynamic tree cut method and projected the expression data onto a lower-dimensional module space by computing the single-sample gene set enrichment score of each module. We tested the single-sample scores of each module for association with levels of depression severity measured by the Montgomery-?sberg Depression Scale (MADRS). Independent of MDD status, we identified 23 gene modules from the co-expression network. Two modules were significantly associated with the MADRS score after multiple comparison adjustment (adjusted p =?0.009, 0.028 at 0.05 FDR threshold), and one of these modules replicated in a previous RNA-Seq study of MDD ( p =?0.03). The two MADRS-associated modules contain genes previously implicated in mood disorders and show enrichment of apoptosis and B cell receptor signaling. The genes in these modules show a correlation between network centrality and univariate association with depression, suggesting that intramodular hub genes are more likely to be related to MDD compared to other genes in a module.
机译:主要抑郁症(MDD)的基因组变异可能涉及网络中多个基因的相互作用和调控。数据驱动的共表达网络模块推断有可能解释调节网络内的变异,降低RNA-Seq数据的维数,并检测与抑郁严重程度相关的重要基因表达模块。我们对从未经药物治疗的MDD(n =?78)和健康对照(n =?79)受试者的外周血单核细胞中获得的mRNA数据进行了RNA-Seq基因共表达网络分析。在组合的MDD和HC组中,我们使用动态树切割方法通过层次聚类将基因分配到模块中,并通过计算每个模块的单样本基因集富集得分,将表达数据投影到低维模块空间中。我们测试了每个模块的单样本评分,以与通过蒙哥马利-?斯伯格抑郁量表(MADRS)测量的抑郁严重程度相关联。与MDD状态无关,我们从共表达网络中鉴定了23个基因模块。在多次比较调整后,有两个模块与MADRS得分显着相关(调整后的p =?0.009,在0.05 FDR阈值下为0.028),并且这些模块之一在以前的MDD RNA-Seq研究中重复了(p =?0.03)。两个与MADRS相关的模块包含以前牵涉情绪障碍的基因,并显示出丰富的凋亡和B细胞受体信号传导。这些模块中的基因显示网络中心性与抑郁的单变量关联之间的相关性,表明与模块中的其他基因相比,模块内中枢基因更可能与MDD相关。

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