Liu Xu, Cui Yuehua, Li Runze
Department of Statistics and Probability, Michigan State University.
Department of Statistics, Pennsylvania State University.
Stat Sin. 2016 Jul;26:1037-1060. doi: 10.5705/ss.202015.0114.
Gene-environment (G×E) interactions play key roles in many complex diseases. An increasing number of epidemiological studies have shown the combined effect of multiple environmental exposures on disease risk. However, no appropriate statistical models have been developed to conduct a rigorous assessment of such combined effects when G×E interactions are considered. In this paper, we propose a partial linear varying multi-index coefficient model (PLVMICM) to assess how multiple environmental factors act jointly to modify individual genetic risk on complex disease. Our model includes the varying-index coefficient model as a special case, where discrete variables are admitted as the linear part. Thus PLVMICM allows one to study nonlinear interaction effects between genes and continuous environments as well as linear interactions between genes and discrete environments, simultaneously. We derive a profile method to estimate parametric parameters and a B-spline backfitted kernel method to estimate nonlinear interaction functions. Consistency and asymptotic normality of the parametric and nonparametric estimates are established under some regularity conditions. Hypothesis testing for the parametric coefficients and nonparametric functions are conducted. Results show that the statistics for testing the parametric coefficients and the non-parametric functions asymptotically follow a -distribution with different degrees of freedom. The utility of the method is demonstrated through extensive simulations and a case study.
基因-环境(G×E)相互作用在许多复杂疾病中起着关键作用。越来越多的流行病学研究表明多种环境暴露对疾病风险的综合影响。然而,在考虑G×E相互作用时,尚未开发出合适的统计模型来对这种综合影响进行严格评估。在本文中,我们提出了一种部分线性可变多指标系数模型(PLVMICM),以评估多种环境因素如何共同作用来改变个体患复杂疾病的遗传风险。我们的模型将可变指标系数模型作为一种特殊情况包含在内,其中离散变量被视为线性部分。因此,PLVMICM允许人们同时研究基因与连续环境之间的非线性相互作用效应以及基因与离散环境之间的线性相互作用。我们推导了一种用于估计参数参数的轮廓方法和一种用于估计非线性相互作用函数的B样条反向拟合核方法。在一些正则条件下建立了参数估计和非参数估计的一致性和渐近正态性。对参数系数和非参数函数进行了假设检验。结果表明,用于检验参数系数和非参数函数的统计量渐近地服从具有不同自由度的分布。通过广泛的模拟和一个案例研究证明了该方法的实用性。