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剖析基因-环境交互作用:一种考虑层次结构的惩罚稳健方法。

Dissecting gene-environment interactions: A penalized robust approach accounting for hierarchical structures.

机构信息

Department of Statistics, Kansas State University, Manhattan, KS 66506, USA.

Division of Epidemiology, Biostatistics, and Environmental Health, University of Memphis, Memphis, TN 38111, USA.

出版信息

Stat Med. 2018 Feb 10;37(3):437-456. doi: 10.1002/sim.7518. Epub 2017 Oct 16.

Abstract

Identification of gene-environment (G × E) interactions associated with disease phenotypes has posed a great challenge in high-throughput cancer studies. The existing marginal identification methods have suffered from not being able to accommodate the joint effects of a large number of genetic variants, while some of the joint-effect methods have been limited by failing to respect the "main effects, interactions" hierarchy, by ignoring data contamination, and by using inefficient selection techniques under complex structural sparsity. In this article, we develop an effective penalization approach to identify important G × E interactions and main effects, which can account for the hierarchical structures of the 2 types of effects. Possible data contamination is accommodated by adopting the least absolute deviation loss function. The advantage of the proposed approach over the alternatives is convincingly demonstrated in both simulation and a case study on lung cancer prognosis with gene expression measurements and clinical covariates under the accelerated failure time model.

摘要

鉴定与疾病表型相关的基因-环境(G×E)相互作用在高通量癌症研究中提出了巨大的挑战。现有的边缘识别方法存在不能适应大量遗传变异的联合效应的问题,而一些联合效应方法受到不尊重“主效应、相互作用”层次结构、忽略数据污染以及在复杂结构稀疏性下使用效率低下的选择技术的限制。在本文中,我们开发了一种有效的惩罚方法来识别重要的 G×E 相互作用和主效应,这可以考虑到这两种效应的层次结构。通过采用最小绝对偏差损失函数,可以适应可能的数据污染。在所提出的方法与其他方法的比较中,在基于加速失效时间模型的肺癌预后基因表达测量和临床协变量的模拟和案例研究中,都令人信服地证明了所提出方法的优势。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ecfb/5827955/efffd0eb54d6/nihms908048f1.jpg

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