Jones Adam G, Arnold Stevan J, Bürger Reinhard
School of Biology, Georgia Institute of Technology, Atlanta, Georgia 30332, USA.
Evolution. 2004 Aug;58(8):1639-54. doi: 10.1111/j.0014-3820.2004.tb00450.x.
In quantitative genetics, the genetic architecture of traits, described in terms of variances and covariances, plays a major role in determining the trajectory of evolutionary change. Hence, the genetic variance-covariance matrix (G-matrix) is a critical component of modern quantitative genetics theory. Considerable debate has surrounded the issue of G-matrix constancy because unstable G-matrices provide major difficulties for evolutionary inference. Empirical studies and analytical theory have not resolved the debate. Here we present the results of stochastic models of G-matrix evolution in a population responding to an adaptive landscape with an optimum that moves at a constant rate. This study builds on the previous results of stochastic simulations of G-matrix stability under stabilizing selection arising from a stationary optimum. The addition of a moving optimum leads to several important new insights. First, evolution along genetic lines of least resistance increases stability of the orientation of the G-matrix relative to stabilizing selection alone. Evolution across genetic lines of least resistance decreases G-matrix stability. Second, evolution in response to a continuously changing optimum can produce persistent maladaptation for a correlated trait, even if its optimum does not change. Third, the retrospective analysis of selection performs very well when the mean G-matrix (G) is known with certainty, indicating that covariance between G and the directional selection gradient beta is usually small enough in magnitude that it introduces only a small bias in estimates of the net selection gradient. Our results also show, however, that the contemporary G-matrix only serves as a rough guide to G. The most promising approach for the estimation of G is probably through comparative phylogenetic analysis. Overall, our results show that directional selection actually can increase stability of the G-matrix and that retrospective analysis of selection is inherently feasible. One major remaining challenge is to gain a sufficient understanding of the G-matrix to allow the confident estimation of G.
在数量遗传学中,性状的遗传结构(以方差和协方差来描述)在决定进化变化的轨迹方面起着主要作用。因此,遗传方差 - 协方差矩阵(G矩阵)是现代数量遗传学理论的关键组成部分。围绕G矩阵的稳定性问题存在相当多的争论,因为不稳定的G矩阵给进化推断带来了重大困难。实证研究和分析理论尚未解决这一争论。在此,我们展示了在一个种群中G矩阵进化的随机模型的结果,该种群对具有以恒定速率移动的最优值的适应景观做出响应。本研究基于先前关于在由固定最优值产生的稳定选择下G矩阵稳定性的随机模拟结果。添加一个移动的最优值带来了几个重要的新见解。首先,沿着阻力最小的遗传线路进化会增加G矩阵相对于仅稳定选择时方向的稳定性。跨越阻力最小的遗传线路进化会降低G矩阵的稳定性。其次,对持续变化的最优值做出响应的进化可能会导致相关性状持续的适应不良,即使其最优值没有变化。第三,当平均G矩阵(G)确定已知时,选择的回顾性分析表现良好,这表明G与定向选择梯度β之间的协方差在大小上通常足够小,以至于它在净选择梯度的估计中仅引入很小的偏差。然而,我们的结果也表明,当代G矩阵仅作为G的一个粗略指南。估计G最有前景的方法可能是通过比较系统发育分析。总体而言,我们的结果表明定向选择实际上可以增加G矩阵的稳定性,并且选择的回顾性分析本质上是可行的。一个主要的剩余挑战是要对G矩阵有足够的了解,以便能够可靠地估计G。