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A Two-Stage Penalized Logistic Regression Approach to Case-Control Genome-Wide Association Studies

机译:病例对照全基因组关联研究的两阶段惩罚逻辑回归方法

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We propose a two-stage penalized logistic regression approach to case-control genome-wide association studies. This approach consists of a screening stage and a selection stage. In the screening stage, main-effect and interaction-effect features are screened by usingL1-penalized logistic like-lihoods. In the selection stage, the retained features are ranked by the logistic likelihood with the smoothly clipped absolute deviation (SCAD) penalty (Fan and Li, 2001) and Jeffrey’s Prior penalty (Firth, 1993), a sequence of nested candidate models are formed, and the models are assessed by a family of extended Bayesian information criteria (J. Chen and Z. Chen, 2008). The proposed approach is applied to the analysis of the prostate cancer data of the Cancer Genetic Markers of Susceptibility (CGEMS) project in the National Cancer Institute, USA. Simulation studies are carried out to compare the approach with the pair-wise multiple testing approach (Marchini et al. 2005) and the LASSO-patternsearch algorithm (Shi et al. 2007).
机译:我们提出了一种两阶段惩罚逻辑回归方法,用于病例对照全基因组关联研究。该方法包括筛选阶段和选择阶段。在筛选阶段,通过使用L1惩罚的逻辑似然来筛选主效应和交互效应特征。在选择阶段,保留特征按逻辑似然排序,并用平滑修剪的绝对偏差(SCAD)罚分(Fan和Li,2001)和杰弗里的先验罚分(Firth,1993)进行排序,从而形成一系列嵌套的候选模型,并通过一系列扩展的贝叶斯信息准则对模型进行评估(J. Chen和Z. Chen,2008)。拟议的方法应用于美国国家癌症研究所的癌症易感性遗传标记(CGEMS)项目的前列腺癌数据分析。进行了仿真研究,以将该方法与成对多重测试方法(Marchini等,2005)和LASSO模式搜索算法(Shi等,2007)进行比较。

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