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Joint Bayesian variable and graph selection for regression models with network-structured predictors

机译:网络结构预测变量的回归模型的联合贝叶斯变量和图选择

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In this work, we develop a Bayesian approach to perform selection of predictors that are linked within a network. We achieve this by combining a sparse regression model relating the predictors to a response variable with a graphical model describing conditional dependencies among the predictors. The proposed method is wellsuited for genomic applications because it allows the identification of pathways of functionally related genes or proteins that impact an outcome of interest. In contrast to previous approaches for network-guided variable selection, we infer the network among predictors using a Gaussian graphical model and do not assume that network information is available a priori. We demonstrate that our method outperforms existing methods in identifying network-structured predictors in simulation settings and illustrate our proposed model with an application to inference of proteins relevant to glioblastoma survival. Copyright (C) 2015 John Wiley & Sons, Ltd.
机译:在这项工作中,我们开发了一种贝叶斯方法来执行对网络内链接的预测变量的选择。我们通过将稀疏回归模型(将预测变量与响应变量相关联)与描述预测变量之间的条件依赖性的图形模型相结合来实现此目的。所提出的方法非常适合基因组应用,因为它可以识别影响相关结果的功能相关基因或蛋白质的途径。与以前的网络引导变量选择方法相反,我们使用高斯图形模型在预测变量之间推断网络,并且不假定网络信息是先验的。我们证明了我们的方法在识别模拟设置中的网络结构预测因子方面优于现有方法,并说明了我们提出的模型以及与胶质母细胞瘤生存相关的蛋白质推论的应用。版权所有(C)2015 John Wiley&Sons,Ltd.

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