Allison D B, Thiel B, St Jean P, Elston R C, Infante M C, Schork N J
Obesity Research Center, St. Luke's/Roosevelt Hospital, Columbia University College of Physicians and Surgeons, New York, USA.
Am J Hum Genet. 1998 Oct;63(4):1190-201. doi: 10.1086/302038.
Genomewide searches for loci influencing complex human traits and diseases such as diabetes, hypertension, and obesity are often plagued by low power and interpretive difficulties. Attempts to remedy these difficulties have typically relied on, and have promoted the use of, novel subject-ascertainment schemes, larger sample sizes, a greater density of DNA markers, and more-sophisticated statistical modeling and analysis strategies. Many of these remedies can be costly to implement. We investigate the utility of a simple statistical model for the mapping of quantitative-trait loci that incorporates multiple phenotypic or diagnostic endpoints into a gene-mapping analysis. The approach considers finding a linear combination of multiple phenotypic values that maximizes the evidence for linkage to a locus. Our results suggest that substantial increases in the power to map loci can be obtained with the proposed technique, although the increase in power obtained is a function of the size and direction of the residual correlation among the phenotypes used in the analysis. Extensive simulation studies are described that justify these claims, for cases in which two phenotypic measures are analyzed. This approach can be easily extended to cover more-complex situations and may provide a basis for more insightful genetic-analysis paradigms.
全基因组搜索影响复杂人类性状和疾病(如糖尿病、高血压和肥胖症)的基因座,常常受到检验效能低和解释困难的困扰。解决这些困难的尝试通常依赖于并推动了新型受试者确定方案、更大样本量、更高密度的DNA标记以及更复杂的统计建模和分析策略的使用。这些补救措施中的许多实施起来成本高昂。我们研究了一种简单统计模型在数量性状基因座定位中的效用,该模型将多个表型或诊断终点纳入基因定位分析。该方法考虑找到多个表型值的线性组合,以最大化与一个基因座连锁的证据。我们的结果表明,尽管获得的检验效能增加是分析中所用表型之间残余相关性的大小和方向的函数,但使用所提出的技术可以大幅提高基因座定位的检验效能。文中描述了广泛的模拟研究,这些研究证实了针对分析两个表型指标的情况所提出的这些说法。这种方法可以很容易地扩展以涵盖更复杂的情况,并可能为更具洞察力的遗传分析范式提供基础。