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Mutation: Lessons from RNA models.

机译:突变:RNA模型的教训。

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摘要

Mutation is a fundamental process in evolution because affects the amount of genetic variation in evolving populations. Molecular-structure models offer significant advantages over traditional population-genetics models for studying mutation, mainly because such models incorporate simple, tractable genotype-to-phenotype maps. Here, I use RNA secondary structure models to study four basic properties of mutation.;The first section of this thesis studies the statistical properties of beneficial mutations. According to population genetics theory, the fitness effects of new beneficial mutations will be exponentially distributed. I show that in RNA there is sufficient correlation between a genotype and its point mutant neighbors to produce non-exponential distributions of fitness effects of beneficial mutations. These results suggest that more sophisticated statistical models may be necessary to adequately describe the distribution of fitness effects of new beneficial mutations.;The second section of this thesis addresses the dynamics of deleterious mutations in evolving populations. There is a vast body of theoretical work addressing deleterious mutations that almost universally assumes that the fitness effects of deleterious mutations are static. I use an RNA simulation model to show that, at moderately high mutation rates, initially deleterious mutations may ultimately confer beneficial effects to the individuals harboring them. This result suggests that deleterious mutations may play a more important role in evolution than previously thought.;The third section of this thesis studies the global patterns of mutations connecting phenotypes in fitness landscapes. I developed a network model to describe global characteristics of the relationship between sequence and structure in RNA fitness landscapes. I show that phenotype abundance varies in a predictable manner and critically influences evolutionary dynamics. A study of naturally occurring functional RNA molecules using a new structural statistic suggests that these molecules are biased towards abundant phenotypes. These results are consistent with an "ascent of the abundant" hypothesis, in which evolution yields abundant phenotypes even when they are not the most fit.;The final section of this thesis addresses the evolution of mutation rates in finite asexual populations. I developed an RNA-based simulation model in which each individual's mutation rate is controlled by a neutral modifier locus. Using this model, I show that smaller populations maintain higher mutation rates than larger populations. I also show that genome length and shape of the fitness function do not significantly determine the evolved mutation rate. Lastly, I show that intermediate rates of environmental change favor evolution of the largest mutation rates.
机译:突变是进化的基本过程,因为它影响着不断进化的种群的遗传变异量。分子结构模型比传统的群体遗传学模型在研究突变方面具有明显优势,这主要是因为此类模型结合了简单易处理的基因型到表型图。在这里,我使用RNA二级结构模型研究了突变的四个基本特性。本论文的第一部分研究了有益突变的统计特性。根据种群遗传学理论,新的有益突变的适应性效应将呈指数分布。我表明,在RNA中,基因型与其点突变邻居之间具有足够的相关性,以产生有益突变的适应性效应的非指数分布。这些结果表明,可能需要更复杂的统计模型来充分描述新的有益突变的适应性效应分布。本论文的第二部分讨论了不断发展的种群中有害突变的动力学。关于有害突变的大量理论工作几乎都普遍假定有害突变的适应性效应是静态的。我使用RNA模拟模型显示,在中等高的突变率下,最初有害的突变可能最终会给携带它们的个体带来有益的影响。这一结果表明,有害的突变可能在进化中起着比以前认为的更为重要的作用。本论文的第三部分研究了适应性景观中连接表型的突变的整体模式。我开发了一个网络模型来描述RNA适应性景观中序列与结构之间关系的全局特征。我表明表型丰度以可预测的方式变化,并严重影响进化动力学。使用新的结构统计数据对天然存在的功能性RNA分子进行的研究表明,这些分子倾向于丰富的表型。这些结果与“丰富的上升”假说是一致的,在该假说中,即使进化不是最合适的,进化也会产生丰富的表型。本论文的最后部分论述了有限无性种群中突变率的演变。我开发了一个基于RNA的仿真模型,其中每个个体的突变率均由中性修饰位点控制。使用该模型,我证明了较小的种群比较大的种群具有更高的突变率。我还表明,基因组长度和适应性功能的形状并不能显着决定进化的突变率。最后,我证明环境变化的中间速率有利于最大突变率的进化。

著录项

  • 作者单位

    The University of Texas at Austin.;

  • 授予单位 The University of Texas at Austin.;
  • 学科 Molecular biology.;Bioinformatics.;Biostatistics.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 163 p.
  • 总页数 163
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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