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Penalized regression approaches to testing for quantitative trait-rare variant association

机译:惩罚性回归方法测试数量性状-稀有变异的关联

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摘要

In statistical data analysis, penalized regression is considered an attractive approach for its ability of simultaneous variable selection and parameter estimation. Although penalized regression methods have shown many advantages in variable selection and outcome prediction over other approaches for high-dimensional data, there is a relative paucity of the literature on their applications to hypothesis testing, e.g., in genetic association analysis. In this study, we apply several new penalized regression methods with a novel penalty, called Truncated L1-penalty (TLP) (Shen et al., ), for either variable selection, or both variable selection and parameter grouping, in a data-adaptive way to test for association between a quantitative trait and a group of rare variants. The performance of the new methods are compared with some existing tests, including some recently proposed global tests and penalized regression-based methods, via simulations and an application to the real sequence data of the Genetic Analysis Workshop 17 (GAW17). Although our proposed penalized methods can improve over some existing penalized methods, often they do not outperform some existing global association tests. Some possible problems with utilizing penalized regression methods in genetic hypothesis testing are discussed. Given the capability of penalized regression in selecting causal variants and its sometimes promising performance, further studies are warranted.
机译:在统计数据分析中,惩罚回归因其同时进行变量选择和参数估计的能力而被认为是一种有吸引力的方法。尽管惩罚回归方法已在变量选择和结果预测方面显示出优于其他高维数据方法的许多优势,但相对而言,将其应用于假设检验(例如在遗传关联分析中)的文献相对较少。在这项研究中,我们在数据自适应中对变量选择或变量选择和参数分组应用了几种新的惩罚性回归方法,并采用了一种新的惩罚,称为截断的L1-惩罚(TLP)(Shen et al。,)。测试定量性状与一组罕见变体之间关联的方法。通过模拟和将新方法的性能与一些现有测试(包括一些最近提议的全局测试和基于惩罚性回归的方法)进行比较,并将其应用于遗传分析研讨会17(GAW17)的实际序列数据。尽管我们提出的惩罚方法可以改进某些现有的惩罚方法,但通常它们的性能并没有优于某些现有的全局关联测试。讨论了在遗传假设检验中利用惩罚回归方法可能出现的问题。鉴于惩罚回归在选择因果变体方面的能力及其有时令人鼓舞的表现,有必要做进一步的研究。

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