Gjuvsland Arne B, Hayes Ben J, Omholt Stig W, Carlborg Orjan
Centre for Integrative Genetics and Department of Animal and Aquacultural Sciences, Norwegian University of Life Sciences, N-1432 Aas, Norway.
Genetics. 2007 Jan;175(1):411-20. doi: 10.1534/genetics.106.058859. Epub 2006 Oct 8.
Functional dependencies between genes are a defining characteristic of gene networks underlying quantitative traits. However, recent studies show that the proportion of the genetic variation that can be attributed to statistical epistasis varies from almost zero to very high. It is thus of fundamental as well as instrumental importance to better understand whether different functional dependency patterns among polymorphic genes give rise to distinct statistical interaction patterns or not. Here we address this issue by combining a quantitative genetic model approach with genotype-phenotype models capable of translating allelic variation and regulatory principles into phenotypic variation at the level of gene expression. We show that gene regulatory networks with and without feedback motifs can exhibit a wide range of possible statistical genetic architectures with regard to both type of effect explaining phenotypic variance and number of apparent loci underlying the observed phenotypic effect. Although all motifs are capable of harboring significant interactions, positive feedback gives rise to higher amounts and more types of statistical epistasis. The results also suggest that the inclusion of statistical interaction terms in genetic models will increase the chance to detect additional QTL as well as functional dependencies between genetic loci over a broad range of regulatory regimes. This article illustrates how statistical genetic methods can fruitfully be combined with nonlinear systems dynamics to elucidate biological issues beyond reach of each methodology in isolation.
基因之间的功能依赖性是数量性状潜在基因网络的一个决定性特征。然而,最近的研究表明,可归因于统计上位性的遗传变异比例从几乎为零到非常高不等。因此,更好地理解多态基因之间不同的功能依赖模式是否会产生不同的统计相互作用模式,具有根本和重要的意义。在这里,我们通过将定量遗传模型方法与能够将等位基因变异和调控原理转化为基因表达水平上的表型变异的基因型-表型模型相结合来解决这个问题。我们表明,具有和不具有反馈基序的基因调控网络在解释表型变异的效应类型和观察到的表型效应背后的明显基因座数量方面,都可以表现出广泛的可能统计遗传结构。虽然所有基序都能够包含显著的相互作用,但正反馈会产生更高数量和更多类型的统计上位性。结果还表明,在遗传模型中纳入统计相互作用项将增加在广泛的调控机制中检测额外数量性状位点以及基因座之间功能依赖性的机会。本文说明了统计遗传方法如何能够富有成效地与非线性系统动力学相结合,以阐明每种方法单独无法触及的生物学问题。