Liang K Y, Huang C Y, Beaty T H
Department of Biostatistics, Johns Hopkins University, Baltimore, MD 21205, USA.
Am J Hum Genet. 2000 May;66(5):1631-41. doi: 10.1086/302900. Epub 2000 Apr 5.
Recent advances in molecular biology have enhanced the opportunity to conduct multipoint mapping for complex diseases. Concurrently, one sees a growing interest in the use of quantitative traits in linkage studies. Here, we present a multipoint sib-pair approach to locate the map position (tau) of a trait locus that controls the observed phenotype (qualitative or quantitative), along with a measure of statistical uncertainty. This method builds on a parametric representation for the expected identical-by-descent statistic at an arbitrary locus, conditional on an event reflecting the sampling scheme, such as affected sib pairs, for qualitative traits, or extreme discordant (ED) sib pairs, for quantitative traits. Our results suggest that the variance about tau&d4;, the estimator of tau, can be reduced by as much as 60%-70% by reducing the length of intervals between markers by one half. For quantitative traits, we examine the precision gain (measured by the variance reduction in tau&d4;) by genotyping extremely concordant (EC) sib pairs and including them along with ED sib pairs in the statistical analysis. The precision gain depends heavily on the residual correlation of the quantitative trait for sib pairs but considerably less on the allele frequency and exact genetic mechanism. Since complex traits involve multiple loci and, hence, the residual correlation cannot be ignored, our finding strongly suggests that one should incorporate EC sib pairs along with ED sib pairs, in both design and analysis. Finally, we empirically establish a simple linear relationship between the magnitude of precision gain and the ratio of the number of ED pairs to the number of EC pairs. This relationship allows investigators to address issues of cost effectiveness that are due to the need for phenotyping and genotyping subjects.
分子生物学的最新进展增加了对复杂疾病进行多点定位的机会。与此同时,人们越来越关注在连锁研究中使用数量性状。在此,我们提出一种多点同胞对方法,用于定位控制观察到的表型(定性或定量)的性状位点的图谱位置(τ),并给出统计不确定性的度量。该方法基于任意位点上预期的同源性统计量的参数表示,条件是反映抽样方案的事件,如定性性状的患病同胞对,或定量性状的极端不一致(ED)同胞对。我们的结果表明,通过将标记之间的间隔长度减半,τ的估计值τ̂周围的方差可减少多达60%-70%。对于定量性状,我们通过对极端一致(EC)同胞对进行基因分型,并将其与ED同胞对一起纳入统计分析,来检验精度增益(通过τ̂的方差减少来衡量)。精度增益在很大程度上取决于同胞对定量性状的残差相关性,但在较小程度上取决于等位基因频率和确切的遗传机制。由于复杂性状涉及多个位点,因此残差相关性不能忽略,我们的发现强烈表明,在设计和分析中都应将EC同胞对与ED同胞对结合起来。最后,我们通过实证建立了精度增益幅度与ED对数量与EC对数量之比之间的简单线性关系。这种关系使研究人员能够解决由于对受试者进行表型分析和基因分型的需求而产生的成本效益问题。