Cheng K F
National Central University and Providence University, Jhongli, Taiwan, ROC.
Stat Med. 2006 Sep 30;25(18):3093-109. doi: 10.1002/sim.2506.
Given the biomedical interest in gene-environment interactions along with the difficulties inherent in gathering genetic data from controls, epidemiologists need methodologies that can increase precision of estimating interactions while minimizing the genotyping of controls. To achieve this purpose, many epidemiologists suggested that one can use case-only design. In this paper, we present a maximum likelihood method for making inference about gene-environment interactions using case-only data. The probability of disease development is described by a logistic risk model. Thus the interactions are model parameters measuring the departure of joint effects of exposure and genotype from multiplicative odds ratios. We extend the typical inference method derived under the assumption of independence between genotype and exposure to that under a more general assumption of conditional independence. Our maximum likelihood method can be applied to analyse both categorical and continuous environmental factors, and generalized to make inference about gene-gene-environment interactions. Moreover, the application of this method can be reduced to simply fitting a multinomial logistic model when we have case-only data. As a consequence, the maximum likelihood estimates of interactions and likelihood ratio tests for hypotheses concerning interactions can be easily computed. The methodology is illustrated through an example based on a study about the joint effects of XRCC1 polymorphisms and smoking on bladder cancer. We also give two simulation studies to show that the proposed method is reliable in finite sample situation.
鉴于生物医学对基因 - 环境相互作用的关注,以及从对照中收集遗传数据所固有的困难,流行病学家需要能够提高估计相互作用精度同时最小化对照基因分型的方法。为实现这一目的,许多流行病学家建议可以使用病例对照设计。在本文中,我们提出了一种使用病例对照数据对基因 - 环境相互作用进行推断的最大似然方法。疾病发生的概率由逻辑风险模型描述。因此,相互作用是衡量暴露和基因型的联合效应与相乘优势比偏差的模型参数。我们将在基因型与暴露独立假设下推导的典型推断方法扩展到在更一般的条件独立假设下的情况。我们的最大似然方法可应用于分析分类和连续环境因素,并推广到对基因 - 基因 - 环境相互作用进行推断。此外,当我们有病例对照数据时,该方法的应用可以简化为简单地拟合一个多项逻辑模型。因此,可以轻松计算相互作用的最大似然估计值以及关于相互作用的假设的似然比检验。通过一个基于XRCC1基因多态性与吸烟对膀胱癌联合效应研究的例子来说明该方法。我们还进行了两项模拟研究,以表明所提出的方法在有限样本情况下是可靠的。