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Predicting Fitness Effects of Beneficial Mutations in Digital Organisms

机译:预测数字生物中有益突变的适应性效应

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Evolutionary adaptation can be viewed as two separate processes. The first process is the origin of new beneficial mutations. The second process is the fixation of some of those beneficial mutations by natural selection. Instead of statistical descriptions of adaptive changes, evolutionary theory is now focusing on predicting fitness effects of beneficial mutations in response to selection. While population genetics has provided an extensive body of theory to predict evolutionary changes, it is often difficult to predict evolution since many factors interact to affect the selective coefficients necessary for prediction. Here, we provide experimental data to study the ability of predicting evolutionary changes by using digital organisms (ALife program). We are concerned with how the dynamics of adaptation and diversification are determined by sequential fixation of beneficial mutations. More specifically, we are interested in the rates of fitness changes in populations and the distribution of fitness effects of beneficial mutations. Our results confirm the diminishing return of the rates of fitness increase. A step model provides a best fit to fitness trajectory of populations. The diminution in the rates of fitness increase is due to both a decrease in step sizes and an increase in waiting times. The distribution of fitness effects among beneficial mutations is nearly exponential except for some small fitness changes of beneficial mutations
机译:进化适应可以看作是两个独立的过程。第一个过程是新的有益突变的起源。第二个过程是通过自然选择固定一些有益的突变。进化论现在不再是对适应性变化的统计描述,而是着眼于预测响应选择的有益突变的适应性效应。尽管群体遗传学提供了广泛的理论来预测进化变化,但由于许多因素相互作用影响预测所必需的选择系数,因此通常很难预测进化。在这里,我们提供实验数据,以研究通过使用数字生物体(ALife程序)预测进化变化的能力。我们关注如何通过有益突变的顺序固定来确定适应和多样化的动力。更具体地说,我们对人群适应性变化的速率以及有益突变的适应性效应分布感兴趣。我们的结果证实了健身率提高的收益递减。阶跃模型最适合人口的健身轨迹。适应率降低的原因是步长的减少和等待时间的增加。有益突变之间的适应度分布几乎是指数分布的,除了有益突变的一些小的适应度变化外

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