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Prioritization of Schizophrenia Risk Genes by a Network-Regularized Logistic Regression Method

机译:网络规整的Logistic回归方法确定精神分裂症风险基因的优先级

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Schizophrenia (SCZ) is a severe mental disorder with a large genetic component. While recent large-scale microarray- and sequencing-based genome wide association studies have made significant progress toward finding SCZ risk variants and genes of subtle effect, the interactions among them were not considered in those studies. Using a protein-protein interaction network both in our regression model and to generate a SCZ gene subnetwork, we developed an analytical framework with Logit-Lapnet, the graphical Laplacian-regularized logistic regression, for whole exome sequencing (WES) data analysis to detect SCZ gene subnetworks. Using simulated data from sequencing-based association study, we compared the performances of Logit-Lapnet with other logistic regression (LR)-based models. We use Logit-Lapnet to prioritize genes according to their coefficients and select top-ranked genes as seeds to generate the gene sub-network that is associated to SCZ. The comparison demonstrated not only the applicability but also better performance of Logit-Lapnet to score disease risk genes using sequencing-based association data. We applied our method to SCZ whole exome sequencing data and selected top-ranked risk genes, the majority of which are either known SCZ genes or genes potentially associated with SCZ. We then used the seed genes to construct SCZ gene subnetworks. This result demonstrates that by ranking gene according to their disease contributions our method scores and thus prioritizes disease risk genes for further investigation.
机译:精神分裂症(SCZ)是一种具有大量遗传成分的严重精神障碍。尽管最近的大规模基于微阵列和测序的全基因组关联研究在寻找SCZ风险变异和微妙影响的基因方面取得了重大进展,但在这些研究中并未考虑它们之间的相互作用。在我们的回归模型中使用蛋白质-蛋白质相互作用网络并生成SCZ基因子网络,我们使用Logit-Lapnet(图形化的Laplacian-regularized logistic回归)开发了一个分析框架,用于全外显子组测序(WES)数据分析以检测SCZ基因子网络。使用来自基于序列的关联研究的模拟数据,我们将Logit-Lapnet的性能与其他基于Logistic回归(LR)的模型进行了比较。我们使用Logit-Lapnet根据其系数对基因进行优先级排序,并选择排名靠前的基因作为种子来生成与SCZ相关的基因子网。该比较不仅证明了Logit-Lapnet使用基于测序的关联数据对疾病风险基因进行评分的适用性,而且还具有更好的性能。我们将我们的方法应用于SCZ全外显子组测序数据并选择了排名最高的风险基因,其中大多数是已知的SCZ基因或与SCZ潜在相关的基因。然后,我们使用种子基因来构建SCZ基因子网络。该结果表明,通过根据疾病的疾病贡献对基因进行排名,我们的方法得到了评分,从而确定了疾病风险基因的优先级,以供进一步研究。

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