Rokyta Darin R, Beisel Craig J, Joyce Paul, Ferris Martin T, Burch Christina L, Wichman Holly A
Department of Biological Sciences, University of Idaho, P.O. Box 443051, Moscow, ID 83844-3051, USA.
J Mol Evol. 2008 Oct;67(4):368-76. doi: 10.1007/s00239-008-9153-x. Epub 2008 Sep 9.
The distribution of fitness effects for beneficial mutations is of paramount importance in determining the outcome of adaptation. It is generally assumed that fitness effects of beneficial mutations follow an exponential distribution, for example, in theoretical treatments of quantitative genetics, clonal interference, experimental evolution, and the adaptation of DNA sequences. This assumption has been justified by the statistical theory of extreme values, because the fitnesses conferred by beneficial mutations should represent samples from the extreme right tail of the fitness distribution. Yet in extreme value theory, there are three different limiting forms for right tails of distributions, and the exponential describes only those of distributions in the Gumbel domain of attraction. Using beneficial mutations from two viruses, we show for the first time that the Gumbel domain can be rejected in favor of a distribution with a right-truncated tail, thus providing evidence for an upper bound on fitness effects. Our data also violate the common assumption that small-effect beneficial mutations greatly outnumber those of large effect, as they are consistent with a uniform distribution of beneficial effects.
有益突变的适合度效应分布对于确定适应结果至关重要。一般认为,有益突变的适合度效应遵循指数分布,例如在数量遗传学、克隆干扰、实验进化以及DNA序列适应的理论处理中。这一假设已通过极值统计理论得到论证,因为有益突变赋予的适合度应代表适合度分布最右侧尾部的样本。然而在极值理论中,分布的右尾有三种不同的极限形式,指数分布仅描述吸引域为冈贝尔分布的那些分布的右尾。利用来自两种病毒的有益突变,我们首次表明可以排除冈贝尔分布,而支持具有右截尾的分布,从而为适合度效应的上限提供了证据。我们的数据也违背了常见假设,即小效应有益突变的数量大大超过大效应有益突变,因为它们与有益效应的均匀分布一致。