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Overlapping Group Logistic Regression with Applications to Genetic Pathway Selection

机译:重叠群逻辑回归在遗传途径选择中的应用

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摘要

Discovering important genes that account for the phenotype of interest has long been a challenge in genome-wide expression analysis. Analyses such as gene set enrichment analysis (GSEA) that incorporate pathway information have become widespread in hypothesis testing, but pathway-based approaches have been largely absent from regression methods due to the challenges of dealing with overlapping pathways and the resulting lack of available software. The R package grpreg is widely used to fit group lasso and other group-penalized regression models; in this study, we develop an extension, grpregOverlap, to allow for overlapping group structure using a latent variable approach. We compare this approach to the ordinary lasso and to GSEA using both simulated and real data. We find that incorporation of prior pathway information can substantially improve the accuracy of gene expression classifiers, and we shed light on several ways in which hypothesis-testing approaches such as GSEA differ from regression approaches with respect to the analysis of pathway data.
机译:长期以来,发现引起感兴趣表型的重要基因一直是全基因组表达分析的挑战。包含途径信息的基因集富集分析(GSEA)等分析在假设检验中已变得很普遍,但是由于应对重叠途径的挑战以及缺乏可用软件的影响,回归方法在很大程度上没有基于途径的方法。 R包grpreg被广泛用于拟合组套索和其他分组惩罚的回归模型;在这项研究中,我们开发了扩展grpregOverlap,以允许使用潜在变量方法重叠组结构。我们使用模拟和真实数据将这种方法与普通套索和GSEA进行了比较。我们发现,整合先前的途径信息可以大大提高基因表达分类器的准确性,并且就途径数据分析方面的假设检验方法(例如GSEA)与回归方法不同,我们提供了几种方法。

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