Wu Xuesen, Jin L, Xiong Momiao
School of Life Science, Fudan University, Shanghai, China.
Eur J Hum Genet. 2008 May;16(5):644-51. doi: 10.1038/sj.ejhg.5202004. Epub 2008 Jan 23.
Widely used statistical interaction models essentially treated the interaction effect as a residual term and hence are likely to limit the power to detect interaction. Alternatively, interactions between two loci can be understood as irreducible dependencies between loci causing disease or viewed as the linkage disequilibrium (LD) between them. This motivated the development of LD-based statistics for the detection of interaction between two loci. Although LD-based statistics have demonstrated high power to detect interaction between two loci, in general, linkage phase information of marker loci for unrelated individuals is unknown. To overcome this limitation, we classify the interaction between two loci into intragametic interaction that characterizes interaction of two alleles from different loci on the same haplotype and intergametic interaction that characterizes the interaction of two alleles from different loci on different haplotypes. Then we show that intragametic and intergametic interaction will lead to the corresponding intragametic and intergametic LD. This stimulates the use of composite measure of LD for developing statistics to detect interaction between two unlinked loci. To study the validity of the composite LD-based statistic for testing interaction, we estimate its type 1 error rates by simulation. To evaluate the performance of the composite LD-based statistic for detection of interaction between two loci, we compare its power with logistic regression and apply it to two real examples. The preliminary results demonstrate that the composite LD-based statistic is a strong alternative to the logistic regressions and the intragametic LD-based statistic for the detection of interaction between two unlinked loci.
广泛使用的统计交互模型本质上把交互效应当作一个残差项,因此可能会限制检测交互作用的效能。另外,两个基因座之间的交互作用可以理解为导致疾病的基因座之间不可简化的依赖性,或者看作是它们之间的连锁不平衡(LD)。这推动了基于连锁不平衡的统计方法的发展,用于检测两个基因座之间的交互作用。尽管基于连锁不平衡的统计方法已证明在检测两个基因座之间的交互作用方面具有高效能,但一般来说,无关个体标记基因座的连锁相信息是未知的。为克服这一限制,我们将两个基因座之间的交互作用分为配子内交互作用(其表征同一单倍型上不同基因座的两个等位基因之间的交互作用)和配子间交互作用(其表征不同单倍型上不同基因座的两个等位基因之间的交互作用)。然后我们表明,配子内和配子间的交互作用将导致相应的配子内和配子间连锁不平衡。这促使人们使用连锁不平衡的综合度量来开发统计方法,以检测两个不连锁基因座之间的交互作用。为研究基于连锁不平衡综合统计量检测交互作用的有效性,我们通过模拟估计其I型错误率。为评估基于连锁不平衡综合统计量检测两个基因座之间交互作用的性能,我们将其效能与逻辑回归进行比较,并将其应用于两个实际例子。初步结果表明,基于连锁不平衡综合统计量是检测两个不连锁基因座之间交互作用时逻辑回归和基于配子内连锁不平衡统计量的有力替代方法。