Gene–environment interaction analysis under the Cox model

Pub Date : 2023-04-10 DOI:10.1007/s10463-023-00871-9
Kuangnan Fang, Jingmao Li, Yaqing Xu, Shuangge Ma, Qingzhao Zhang
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Abstract

For the survival of cancer and many other complex diseases, gene–environment (G-E) interactions have been established as having essential importance. G-E interaction analysis can be roughly classified as marginal and joint, depending on the number of G variables analyzed at a time. In this study, we focus on joint analysis, which can better reflect disease biology and is statistically more challenging. Many approaches have been developed for joint G-E interaction analysis for survival outcomes and led to important findings. However, without rigorous statistical development, quite a few methods have a weak theoretical ground. To fill this knowledge gap, in this article, we consider joint G-E interaction analysis under the Cox model. Sparse group penalization is adopted for regularizing estimation and selecting important main effects and interactions. The “main effects, interactions” variable selection hierarchy, which has been strongly advocated in recent literature, is satisfied. Significantly advancing from some published studies, we rigorously establish the consistency properties under high dimensionality. An effective computational algorithm is developed, simulation demonstrates competitive performance of the proposed approach, and analysis of The Cancer Genome Atlas (TCGA) data on stomach adenocarcinoma (STAD) further demonstrates its practical utility.

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Cox模型下的基因-环境互作分析
对于癌症和许多其他复杂疾病的生存,基因-环境(G-E)相互作用已被确定为具有至关重要的意义。根据一次分析G变量的数量,G- e相互作用分析大致可分为边际和联合两种。在本研究中,我们侧重于联合分析,这可以更好地反映疾病生物学,在统计学上更具挑战性。已经开发了许多方法来联合G-E相互作用分析生存结果,并导致了重要的发现。然而,由于没有严格的统计发展,相当多的方法理论基础薄弱。为了填补这一知识空白,在本文中,我们考虑在Cox模型下的联合G-E相互作用分析。采用稀疏组惩罚对估计进行正则化,选择重要的主效应和交互作用。满足近年来文献中大力提倡的“主效应、交互作用”变量选择层次。在一些已发表的研究成果的基础上,我们严格地建立了高维下的一致性。开发了一种有效的计算算法,仿真验证了该方法的竞争性能,并通过对胃癌基因组图谱(TCGA)数据的分析进一步验证了该方法的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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