Biometris, Wageningen University and Research Centre, Wageningen, The Netherlands.
Curr Opin Plant Biol. 2010 Apr;13(2):193-205. doi: 10.1016/j.pbi.2010.01.001.
QTL mapping methods for complex traits are challenged by new developments in marker technology, phenotyping platforms, and breeding methods. In meeting these challenges, QTL mapping approaches will need to also acknowledge the central roles of QTL by environment interactions (QEI) and QTL by trait interactions in the expression of complex traits like yield. This paper presents an overview of mixed model QTL methodology that is suitable for many types of populations and that allows predictive modeling of QEI, both for environmental and developmental gradients. Attention is also given to multi-trait QTL models which are essential to interpret the genetic basis of trait correlations. Biophysical (crop growth) model simulations are proposed as a complement to statistical QTL mapping for the interpretation of the nature of QEI and to investigate better methods for the dissection of complex traits into component traits and their genetic controls.
复杂性状的 QTL 作图方法受到标记技术、表型平台和育种方法新进展的挑战。在应对这些挑战时,QTL 作图方法还需要承认 QTL 与环境互作(QEI)和 QTL 与性状互作在复杂性状表达中的核心作用,如产量。本文介绍了一种适合多种群体的混合模型 QTL 方法,该方法可用于预测环境和发育梯度的 QEI。还关注了多性状 QTL 模型,这对于解释性状相关性的遗传基础至关重要。生物物理(作物生长)模型模拟被提议作为统计 QTL 作图的补充,以解释 QEI 的性质,并研究将复杂性状分解为组成性状及其遗传控制的更好方法。