选择(遗传算法)
协方差
遗传(遗传算法)
生物
人口
功能(生物学)
自然选择
统计
数学
进化生物学
遗传学
计算机科学
人工智能
基因
社会学
人口学
作者
Mark Kirkpatrick,David Lofsvold,Michael Bulmer
出处
期刊:Genetics
[Oxford University Press]
日期:1990-04-01
卷期号:124 (4): 979-993
被引量:688
标识
DOI:10.1093/genetics/124.4.979
摘要
Abstract We present methods for estimating the parameters of inheritance and selection that appear in a quantitative genetic model for the evolution growth trajectories and other "infinite-dimensional" traits that we recently introduced. Two methods for estimating the additive genetic covariance function are developed, a "full" model that fully fits the data and a "reduced" model that generates a smoothed estimate consistent with the sampling errors in the data. By decomposing the covariance function into its eigenvalues and eigenfunctions, it is possible to identify potential evolutionary changes in the population's mean growth trajectory for which there is (and those for which there is not) genetic variation. Algorithms for estimating these quantities, their confidence intervals, and for testing hypotheses about them are developed. These techniques are illustrated by an analysis of early growth in mice. Compatible methods for estimating the selection gradient function acting on growth trajectories in natural or domesticated populations are presented. We show how the estimates for the additive genetic covariance function and the selection gradient function can be used to predict the evolutionary change in a population's mean growth trajectory.
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