Chebib Jobran, Guillaume Frédéric
Department of Evolutionary Biology and Environmental Studies, University of Zürich, Winterthurerstrasse 190, CH-8057, Zürich, Switzerland.
Evolution. 2017 Oct;71(10):2298-2312. doi: 10.1111/evo.13320. Epub 2017 Sep 13.
Phenotypic traits do not always respond to selection independently from each other and often show correlated responses to selection. The structure of a genotype-phenotype map (GP map) determines trait covariation, which involves variation in the degree and strength of the pleiotropic effects of the underlying genes. It is still unclear, and debated, how much of that structure can be deduced from variational properties of quantitative traits that are inferred from their genetic (co) variance matrix (G-matrix). Here we aim to clarify how the extent of pleiotropy and the correlation among the pleiotropic effects of mutations differentially affect the structure of a G-matrix and our ability to detect genetic constraints from its eigen decomposition. We show that the eigenvectors of a G-matrix can be predictive of evolutionary constraints when they map to underlying pleiotropic modules with correlated mutational effects. Without mutational correlation, evolutionary constraints caused by the fitness costs associated with increased pleiotropy are harder to infer from evolutionary metrics based on a G-matrix's geometric properties because uncorrelated pleiotropic effects do not affect traits' genetic correlations. Correlational selection induces much weaker modular partitioning of traits' genetic correlations in absence then in presence of underlying modular pleiotropy.
表型性状并不总是相互独立地对选择作出反应,而是常常表现出对选择的相关反应。基因型-表型图谱(GP图谱)的结构决定了性状协变,这涉及到潜在基因的多效性效应的程度和强度的变化。从定量性状的遗传(协)方差矩阵(G矩阵)推断出的变分特性中,究竟能推导出多少这种结构,目前仍不清楚且存在争议。在这里,我们旨在阐明多效性的程度以及突变的多效性效应之间的相关性如何不同地影响G矩阵的结构,以及我们从其特征分解中检测遗传限制的能力。我们表明,当G矩阵的特征向量映射到具有相关突变效应的潜在多效性模块时,它们可以预测进化限制。如果没有突变相关性,基于G矩阵几何特性的进化指标就更难推断出与多效性增加相关的适应度成本所导致的进化限制,因为不相关的多效性效应不会影响性状的遗传相关性。在没有潜在模块多效性的情况下,相关选择引起的性状遗传相关性的模块划分比存在时要弱得多。