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Functional Logistic Regression Approach to Detecting Gene by Longitudinal Environmental Exposure Interaction in a Case-Control Study

机译:病例对照研究中通过纵向环境接触相互作用检测基因的功能Logistic回归方法

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Most complex human diseases are likely the consequence of the joint actions of genetic and environmental factors. Identification of gene-environment (G x E) interactions not only contributes to a better understanding of the disease mechanisms, but also improves disease risk prediction and targeted intervention. In contrast to the large number of genetic susceptibility loci discovered by genome-wide association studies, there have been very few successes in identifying G x E interactions, which may be partly due to limited statistical power and inaccurately measured exposures. Although existing statistical methods only consider interactions between genes and static environmental exposures, many environmental/lifestyle factors, such as air pollution and diet, change over time, and cannot be accurately captured at one measurement time point or by simply categorizing into static exposure categories. There is a dearth of statistical methods for detecting gene by time-varying environmental exposure interactions. Here, we propose a powerful functional logistic regression (FLR) approach to model the time-varying effect of longitudinal environmental exposure and its interaction with genetic factors on disease risk. Capitalizing on the powerful functional data analysis framework, our proposed FLR model is capable of accommodating longitudinal exposures measured at irregular time points and contaminated by measurement errors, commonly encountered in observational studies. We use extensive simulations to show that the proposed method can control the Type I error and is more powerful than alternative ad hoc methods. We demonstrate the utility of this new method using data from a case-control study of pancreatic cancer to identify the windows of vulnerability of lifetime body mass index on the risk of pancreatic cancer as well as genes that may modify this association.
机译:人类最复杂的疾病很可能是遗传和环境因素共同作用的结果。基因-环境(G x E)相互作用的鉴定不仅有助于更好地了解疾病机制,而且还可以改善疾病风险预测和针对性干预。与通过全基因组关联研究发现的大量遗传易感基因座相反,在鉴定G x E相互作用方面几乎没有成功,这可能部分是由于有限的统计能力和不准确的暴露量。尽管现有的统计方法仅考虑基因与静态环境暴露之间的相互作用,但许多环境/生活方式因素(例如空气污染和饮食)会随时间变化,并且无法在一个测量时间点准确地捕获或仅通过归类为静态暴露类别即可准确捕获。缺乏通过时变环境暴露相互作用检测基因的统计方法。在这里,我们提出了一种功能强大的逻辑对数回归(FLR)方法来模拟纵向环境暴露及其与遗传因素对疾病风险的相互作用的时变效应。利用功能强大的功能数据分析框架,我们提出的FLR模型能够适应在不规则时间点测量的纵向曝光,并受到观测研究中经常遇到的测量误差的污染。我们使用广泛的仿真结果表明,所提出的方法可以控制I型错误,并且比替代性的即席方法更强大。我们使用来自胰腺癌病例对照研究的数据来证明这种新方法的效用,以鉴定终生体重指数对胰腺癌风险以及可能修饰这种关联的基因的脆弱性窗口。

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