Stearns T M, Beever J E, Southey B R, Ellis M, McKeith F K, Rodriguez-Zas S L
Department of Animal Sciences, University of Illinois at Urbana-Champaign, Urbana, 61801, USA.
J Anim Sci. 2005 Nov;83(11):2471-81. doi: 10.2527/2005.83112471x.
The merits of complementary multivariate techniques to identify QTL associated with multiple traits were evaluated. Records from 806 F2 pigs pertaining to a Berkshire x Duroc three-generation population were available. Six multitrait groups on SSC 2, 6, 13, and 18 with information on 30 markers were studied. Multivariate techniques studied included multivariate models and principal components analysis of each multitrait group. All models included, in addition to systematic effects, additive, dominance, and imprinting coefficients corresponding to a one-QTL model and a random family effect. Multivariate analysis identified QTL associated with genomewise significant variation in four of the multitrait groups. The majority of the multivariate analysis provided greater precision of parameter estimates and higher statistical significance in some cases than univariate approaches, because of the greater parameterization of the multivariate models and moderate information content of the data. Principal component analysis results were consistent with univariate and multivariate analyses and recovered the levels of statistical significance observed in univariate analyses on the original data. In addition, principal component analysis was able to provide a location associated with LM area not detected by other analyses. The relative advantage of multivariate over the univariate approaches varied with the level of genetic covariance between traits because of the modeled QTL effect and information contained in the data; however, multivariate approaches have the unique capability to identify pleiotropic effects or multiple linked QTL.
评估了互补多元技术在识别与多个性状相关的QTL方面的优点。有来自一个伯克希尔×杜洛克三代群体的806头F2猪的记录。研究了位于SSC 2、6、13和18上的六个多性状组,这些组有30个标记的信息。所研究的多元技术包括每个多性状组的多元模型和主成分分析。所有模型除了系统效应外,还包括对应于单QTL模型的加性、显性和印记系数以及随机家系效应。多元分析在四个多性状组中识别出了与全基因组显著变异相关的QTL。由于多元模型的参数化程度更高以及数据的信息含量适中,在某些情况下,大多数多元分析比单变量方法提供了更高的参数估计精度和更高的统计显著性。主成分分析结果与单变量和多元分析一致,并恢复了对原始数据进行单变量分析时观察到的统计显著性水平。此外,主成分分析能够提供一个与其他分析未检测到的LM区域相关的位置。由于建模的QTL效应和数据中包含的信息,多元方法相对于单变量方法的相对优势随性状间遗传协方差水平而变化;然而,多元方法具有识别多效性效应或多个连锁QTL的独特能力。