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Likelihood Ratio Test for Detecting Gene (G)-Environment (E) Interactions Under an Additive Risk Model Exploiting G-E Independence for Case-Control Data

机译:利用案例控制数据的G-E独立性的加性风险模型下检测基因(G)与环境(E)相互作用的似然比检验

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摘要

There has been a long-standing controversy in epidemiology with regard to an appropriate risk scale for testing interactions between genes (G) and environmental exposure (E ). Although interaction tests based on the logistic model—which approximates the multiplicative risk for rare diseases—have been more widely applied because of its convenience in statistical modeling, interactions under additive risk models have been regarded as closer to true biologic interactions and more useful in intervention-related decision-making processes in public health. It has been well known that exploiting a natural assumption of G-E independence for the underlying population can dramatically increase statistical power for detecting multiplicative interactions in case-control studies. However, the implication of the independence assumption for tests for additive interaction has not been previously investigated. In this article, the authors develop a likelihood ratio test for detecting additive interactions for case-control studies that incorporates the G-E independence assumption. Numerical investigation of power suggests that incorporation of the independence assumption can enhance the efficiency of the test for additive interaction by 2- to 2.5-fold. The authors illustrate their method by applying it to data from a bladder cancer study.
机译:在流行病学方面,关于测试基因(G)和环境暴露(E)之间相互作用的适当风险等级一直存在争议。尽管基于逻辑模型的交互测试(近似稀有疾病的乘积风险)由于其在统计建模中的便利性而得到了更广泛的应用,但附加风险模型下的交互被认为更接近于真正的生物学交互,并且在干预中更有用公共卫生方面的相关决策过程。众所周知,对基本人群利用G-E独立性的自然假设可以显着提高在病例对照研究中检测乘性相互作用的统计能力。但是,之前尚未研究过独立性假设对添加剂相互作用测试的影响。在本文中,作者开发了一种似然比测试,用于检测病例对照研究中的加性相互作用,该测试纳入了G-E独立性假设。功效的数值研究表明,独立性假设的并入可以将附加相互作用的测试效率提高2到2.5倍。作者通过将其应用于膀胱癌研究的数据来说明他们的方法。

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