Schaid D J, Sommer S S
Department of Health Sciences Research, Mayo Clinic/Foundation, Rochester, MN 55905.
Am J Hum Genet. 1994 Aug;55(2):402-9.
Studies of association between candidate genes and disease can be designed to use cases with disease, and in place of nonrelated controls, their parents. The advantage of this design is the elimination of spurious differences due to ethnic differences between cases and nonrelated controls. However, several statistical methods of analysis have been proposed in the literature, and the choice of analysis is not always clear. We review some of the statistical methods currently developed and present two new statistical methods aimed at specific genetic hypotheses of dominance and recessivity of the candidate gene. These new methods can be more powerful than other current methods, as demonstrated by simulations. The basis of these new statistical methods is a likelihood approach. The advantage of the likelihood framework is that regression models can be developed to assess genotype-environment interactions, as well as the relative contribution that alleles at the candidate-gene locus make to the relative risk (RR) of disease. This latter development allows testing of (1) whether interactions between alleles exist, on the scale of log RR, and (2) whether alleles originating from the mother or father of a case impart different risks, i.e., genomic imprinting.
候选基因与疾病之间关联的研究可以设计为使用患有疾病的病例,并以病例的父母代替无亲缘关系的对照。这种设计的优点是消除了由于病例与无亲缘关系对照之间的种族差异而产生的虚假差异。然而,文献中已经提出了几种统计分析方法,而分析方法的选择并不总是明确的。我们回顾了目前开发的一些统计方法,并提出了两种针对候选基因显性和隐性特定遗传假设的新统计方法。如模拟所示,这些新方法可能比目前的其他方法更有效。这些新统计方法的基础是似然法。似然框架的优点是可以开发回归模型来评估基因型-环境相互作用,以及候选基因座上等位基因对疾病相对风险(RR)的相对贡献。后一项进展允许检验(1)等位基因之间在对数RR尺度上是否存在相互作用,以及(2)病例的母亲或父亲来源的等位基因是否赋予不同的风险,即基因组印记。