Pfeiffer Ruth M, Hildesheim Allan, Gail Mitchell H, Pee David, Chen Chien-Jen, Goldstein Alisa M, Diehl Scott R
Division of Cancer Epidemiology and Genetics, National Cancer Institute, Bethesda, Maryland 20892-7244, USA.
Genet Epidemiol. 2003 Jan;24(1):14-23. doi: 10.1002/gepi.10191.
Family studies to identify disease-related genes frequently collect only families with multiple cases. It is often desirable to determine if risk factors that are known to influence disease risk in the general population also play a role in the study families. If so, these factors should be incorporated into the genetic analysis to control for confounding. Pfeiffer et al. [2001 Biometrika 88: 933-948] proposed a variance components or random effects model to account for common familial effects and for different genetic correlations among family members. After adjusting for ascertainment, they found maximum likelihood estimates of the measured exposure effects. Although it is appealing that this model accounts for genetic correlations as well as for the ascertainment of families, in order to perform an analysis one needs to specify the distribution of random genetic effects. The current work investigates the robustness of the proposed model with respect to various misspecifications of genetic random effects in simulations. When the true underlying genetic mechanism is polygenic with a small dominant component, or Mendelian with low allele frequency and penetrance, the effects of misspecification on the estimation of fixed effects in the model are negligible. The model is applied to data from a family study on nasopharyngeal carcinoma in Taiwan.
旨在识别与疾病相关基因的家系研究通常仅收集有多个病例的家系。通常需要确定在一般人群中已知会影响疾病风险的危险因素在研究家系中是否也起作用。如果是这样,这些因素应纳入遗传分析以控制混杂因素。Pfeiffer等人[2001年《生物统计学》88:933 - 948]提出了一种方差成分或随机效应模型,以解释常见的家族效应以及家庭成员之间不同的遗传相关性。在调整了确诊因素后,他们找到了测量暴露效应的最大似然估计值。尽管该模型考虑了遗传相关性以及家系的确诊情况很有吸引力,但为了进行分析,需要指定随机遗传效应的分布。当前的工作在模拟中研究了所提出的模型相对于遗传随机效应的各种错误设定的稳健性。当真正的潜在遗传机制是具有小显性成分的多基因机制,或者是具有低等位基因频率和外显率的孟德尔遗传机制时,错误设定对模型中固定效应估计的影响可以忽略不计。该模型应用于台湾一项关于鼻咽癌的家系研究数据。