Bhattacharjee Samsiddhi, Kuo Chia-Ling, Mukhopadhyay Nandita, Brock Guy N, Weeks Daniel E, Feingold Eleanor
Department of Human Genetics, Graduate School of Public Health, University of Pittsburgh, Pittsburgh, PA 15261, USA.
Am J Hum Genet. 2008 Mar;82(3):567-82. doi: 10.1016/j.ajhg.2007.11.012. Epub 2008 Feb 21.
The traditional variance components approach for quantitative trait locus (QTL) linkage analysis is sensitive to violations of normality and fails for selected sampling schemes. Recently, a number of new methods have been developed for QTL mapping in humans. Most of the new methods are based on score statistics or regression-based statistics and are expected to be relatively robust to non-normality of the trait distribution and also to selected sampling, at least in terms of type I error. Whereas the theoretical development of these statistics is more or less complete, some practical issues concerning their implementation still need to be addressed. Here we study some of these issues such as the choice of denominator variance estimates, weighting of pedigrees, effect of parameter misspecification, effect of non-normality of the trait distribution, and effect of incorporating dominance. We present a comprehensive discussion of the theoretical properties of various denominator variance estimates and of the weighting issue and then perform simulation studies for nuclear families to compare the methods in terms of power and robustness. Based on our analytical and simulation results, we provide general guidelines regarding the choice of appropriate QTL mapping statistics in practical situations.
用于数量性状基因座(QTL)连锁分析的传统方差成分法对正态性的违背很敏感,并且对于选择的抽样方案不适用。最近,已经开发出了一些用于人类QTL定位的新方法。大多数新方法基于得分统计或基于回归的统计,并且预计至少在I型错误方面,对性状分布的非正态性以及选择抽样具有相对较强的稳健性。虽然这些统计方法的理论发展或多或少已经完成,但关于它们实施的一些实际问题仍需要解决。在这里,我们研究其中的一些问题,如分母方差估计的选择、家系加权、参数错误指定的影响、性状分布非正态性的影响以及纳入显性效应的影响。我们对各种分母方差估计的理论性质和加权问题进行了全面讨论,然后对核心家系进行模拟研究,以比较这些方法在功效和稳健性方面的表现。基于我们的分析和模拟结果,我们提供了在实际情况下选择合适的QTL定位统计方法的一般指导原则。