Siren J, Ovaskainen O, Merilä J
Metapopulation Research Centre, Department of Biosciences, University of Helsinki, Helsinki, Finland.
Centre for Biodiversity Dynamics, Department of Biology, Norwegian University of Science and Technology, Trondheim, Norway.
Mol Ecol. 2017 Oct;26(19):5099-5113. doi: 10.1111/mec.14265. Epub 2017 Aug 21.
The genetic variance-covariance matrix (G) is a quantity of central importance in evolutionary biology due to its influence on the rate and direction of multivariate evolution. However, the predictive power of empirically estimated G-matrices is limited for two reasons. First, phenotypes are high-dimensional, whereas traditional statistical methods are tuned to estimate and analyse low-dimensional matrices. Second, the stability of G to environmental effects and over time remains poorly understood. Using Bayesian sparse factor analysis (BSFG) designed to estimate high-dimensional G-matrices, we analysed levels variation and covariation in 10,527 expressed genes in a large (n = 563) half-sib breeding design of three-spined sticklebacks subject to two temperature treatments. We found significant differences in the structure of G between the treatments: heritabilities and evolvabilities were higher in the warm than in the low-temperature treatment, suggesting more and faster opportunity to evolve in warm (stressful) conditions. Furthermore, comparison of G and its phenotypic equivalent P revealed the latter is a poor substitute of the former. Most strikingly, the results suggest that the expected impact of G on evolvability-as well as the similarity among G-matrices-may depend strongly on the number of traits included into analyses. In our results, the inclusion of only few traits in the analyses leads to underestimation in the differences between the G-matrices and their predicted impacts on evolution. While the results highlight the challenges involved in estimating G, they also illustrate that by enabling the estimation of large G-matrices, the BSFG method can improve predicted evolutionary responses to selection.
遗传方差协方差矩阵(G)在进化生物学中具有至关重要的地位,因为它会影响多变量进化的速率和方向。然而,基于经验估计的G矩阵的预测能力受到两方面限制。其一,表型具有高维度,而传统统计方法适用于估计和分析低维度矩阵。其二,G对环境效应以及随时间变化的稳定性仍知之甚少。我们运用旨在估计高维度G矩阵的贝叶斯稀疏因子分析(BSFG),对三刺鱼的一个大型(n = 563)半同胞育种设计中的10527个表达基因的水平变异和协变进行了分析,该设计接受两种温度处理。我们发现不同处理之间G的结构存在显著差异:温暖处理组的遗传力和进化能力高于低温处理组,这表明在温暖(有压力)条件下有更多且更快的进化机会。此外,对G与其表型等效物P的比较表明,后者是前者的较差替代品。最引人注目的是,结果表明G对进化能力的预期影响以及G矩阵之间的相似性可能强烈依赖于分析中所包含的性状数量。在我们的结果中,分析中仅纳入少数性状会导致对G矩阵之间差异及其对进化的预测影响的低估。虽然结果突出了估计G所涉及的挑战,但它们也表明,通过能够估计大型G矩阵,BSFG方法可以改善对选择的预测进化响应。