Jiang C, Zeng Z B
Department of Agronomy, Jiangsu Agricultural College, People's Republic of China.
Genetics. 1995 Jul;140(3):1111-27. doi: 10.1093/genetics/140.3.1111.
We present in this paper models and statistical methods for performing multiple trait analysis on mapping quantitative trait loci (QTL) based on the composite interval mapping method. By taking into account the correlated structure of multiple traits, this joint analysis has several advantages, compared with separate analyses, for mapping QTL, including the expected improvement on the statistical power of the test for QTL and on the precision of parameter estimation. Also this joint analysis provides formal procedures to test a number of biologically interesting hypotheses concerning the nature of genetic correlations between different traits. Among the testing procedures considered are those for joint mapping, pleiotropy, QTL by environment interaction, and pleiotropy vs. close linkage. The test of pleiotropy (one pleiotropic QTL at a genome position) vs. close linkage (multiple nearby nonpleiotropic QTL) can have important implications for our understanding of the nature of genetic correlations between different traits in certain regions of a genome and also for practical applications in animal and plant breeding because one of the major goals in breeding is to break unfavorable linkage. Results of extensive simulation studies are presented to illustrate various properties of the analyses.
我们在本文中介绍了基于复合区间作图法对数量性状基因座(QTL)进行多性状分析的模型和统计方法。通过考虑多个性状的相关结构,与单独分析相比,这种联合分析在QTL定位方面具有多个优势,包括有望提高QTL检验的统计功效以及参数估计的精度。此外,这种联合分析提供了正式程序,用于检验一些关于不同性状之间遗传相关性本质的具有生物学意义的假设。在考虑的检验程序中,有联合定位、多效性、QTL与环境互作以及多效性与紧密连锁的检验。多效性(基因组位置上的一个多效性QTL)与紧密连锁(多个附近的非多效性QTL)的检验,对于我们理解基因组某些区域不同性状之间遗传相关性的本质,以及对于动植物育种的实际应用可能具有重要意义,因为育种的主要目标之一是打破不利的连锁。本文给出了广泛模拟研究的结果,以说明分析的各种性质。