Lou Xiang-Yang, Chen Guo-Bo, Yan Lei, Ma Jennie Z, Zhu Jun, Elston Robert C, Li Ming D
Department of Psychiatry and Neurobehavioral Sciences, University of Virginia, Charlottesville, VA 22911, USA.
Am J Hum Genet. 2007 Jun;80(6):1125-37. doi: 10.1086/518312. Epub 2007 Apr 25.
The determination of gene-by-gene and gene-by-environment interactions has long been one of the greatest challenges in genetics. The traditional methods are typically inadequate because of the problem referred to as the "curse of dimensionality." Recent combinatorial approaches, such as the multifactor dimensionality reduction (MDR) method, the combinatorial partitioning method, and the restricted partition method, have a straightforward correspondence to the concept of the phenotypic landscape that unifies biological, statistical genetics, and evolutionary theories. However, the existing approaches have several limitations, such as not allowing for covariates, that restrict their practical use. In this study, we report a generalized MDR (GMDR) method that permits adjustment for discrete and quantitative covariates and is applicable to both dichotomous and continuous phenotypes in various population-based study designs. Computer simulations indicated that the GMDR method has superior performance in its ability to identify epistatic loci, compared with current methods in the literature. We applied our proposed method to a genetics study of four genes that were reported to be associated with nicotine dependence and found significant joint action between CHRNB4 and NTRK2. Moreover, our example illustrates that the newly proposed GMDR approach can increase prediction ability, suggesting that its use is justified in practice. In summary, GMDR serves the purpose of identifying contributors to population variation better than do the other existing methods.
逐个基因以及基因与环境之间相互作用的判定长期以来一直是遗传学领域最大的挑战之一。由于存在所谓的“维度灾难”问题,传统方法通常并不适用。最近的组合方法,如多因素降维(MDR)法、组合划分法和受限划分法,与统一生物学、统计遗传学和进化理论的表型景观概念有着直接的对应关系。然而,现有方法存在一些局限性,比如不允许使用协变量,这限制了它们的实际应用。在本研究中,我们报告了一种广义MDR(GMDR)方法,该方法允许对离散和定量协变量进行调整,适用于各种基于人群的研究设计中的二分和连续表型。计算机模拟表明,与文献中的现有方法相比,GMDR方法在识别上位性位点的能力方面具有卓越性能。我们将所提出的方法应用于一项对四个据报道与尼古丁依赖相关基因的遗传学研究,发现CHRNB4和NTRK2之间存在显著的联合作用。此外,我们的例子表明新提出的GMDR方法可以提高预测能力,这表明其在实际应用中是合理的。总之,与其他现有方法相比,GMDR更有助于识别群体变异的影响因素。