Kwak Il-Youp, Moore Candace R, Spalding Edgar P, Broman Karl W
Department of Statistics, University of Wisconsin, Madison, Wisconsin 53706.
Department of Botany, University of Wisconsin, Madison, Wisconsin 53706.
Genetics. 2014 Aug;197(4):1409-16. doi: 10.1534/genetics.114.166306. Epub 2014 Jun 14.
Most statistical methods for quantitative trait loci (QTL) mapping focus on a single phenotype. However, multiple phenotypes are commonly measured, and recent technological advances have greatly simplified the automated acquisition of numerous phenotypes, including function-valued phenotypes, such as growth measured over time. While methods exist for QTL mapping with function-valued phenotypes, they are generally computationally intensive and focus on single-QTL models. We propose two simple, fast methods that maintain high power and precision and are amenable to extensions with multiple-QTL models using a penalized likelihood approach. After identifying multiple QTL by these approaches, we can view the function-valued QTL effects to provide a deeper understanding of the underlying processes. Our methods have been implemented as a package for R, funqtl.
大多数用于数量性状基因座(QTL)定位的统计方法都聚焦于单一表型。然而,通常会测量多个表型,并且近期的技术进步极大地简化了众多表型的自动获取,包括功能值表型,如随时间测量的生长情况。虽然存在用于功能值表型的QTL定位方法,但它们通常计算量很大,并且聚焦于单QTL模型。我们提出了两种简单、快速的方法,这些方法保持了高功效和高精度,并且适合使用惩罚似然方法扩展为多QTL模型。通过这些方法识别出多个QTL后,我们可以查看功能值QTL效应,以更深入地理解潜在过程。我们的方法已作为R语言的一个包funqtl实现。