Chen Xiaowu, Li Zhaohai
Department of Biostatistics, Human Genome Sciences, Inc., 14200 Shady Grove Rd. Rockville, MD, USA.
Biom J. 2008 Apr;50(2):270-82. doi: 10.1002/bimj.200710396.
A retrospective likelihood-based approach was proposed to test and estimate the effect of haplotype on disease risk using unphased genotype data with adjustment for environmental covariates. The proposed method was also extended to handle the data in which the haplotype and environmental covariates are not independent. Likelihood ratio tests were constructed to test the effects of haplotype and gene-environment interaction. The model parameters such as haplotype effect size was estimated using an Expectation Conditional-Maximization (ECM) algorithm developed by Meng and Rubin (1993). Model-based variance estimates were derived using the observed information matrix. Simulation studies were conducted for three different genetic effect models, including dominant effect, recessive effect, and additive effect. The results showed that the proposed method generated unbiased parameter estimates, proper type I error, and true beta coverage probabilities. The model performed well with small or large sample sizes, as well as short or long haplotypes.
提出了一种基于回顾性似然的方法,用于使用未分型的基因型数据并调整环境协变量来检验和估计单倍型对疾病风险的影响。所提出的方法还进行了扩展,以处理单倍型与环境协变量不独立的数据。构建了似然比检验来检验单倍型和基因-环境相互作用的影响。使用Meng和Rubin(1993年)开发的期望条件最大化(ECM)算法估计单倍型效应大小等模型参数。基于观测信息矩阵得出基于模型的方差估计。针对三种不同的遗传效应模型进行了模拟研究,包括显性效应、隐性效应和加性效应。结果表明,所提出的方法产生了无偏参数估计、合适的I型错误率和真实的β覆盖概率。该模型在样本量大小、单倍型长短的情况下均表现良好。