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Using Drosophila natural variation to study the role of positive selection in cis-regulatory evolution and the genetic basis of a complex disease trait.

机译:使用果蝇自然变异研究正选择在顺式调控进化中的作用以及复杂疾病性状的遗传基础。

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摘要

In the first part of this thesis, I examined the role of positive selection in cis-regulatory evolution. In comparison with the coding regions, where the importance of positive selection in shaping natural variation patterns has been established by both theoretical and empirical work, the role of natural selection in cis-regulatory regions has been more controversial. On one hand, genome-wide scans of noncoding DNA pointed to strong signals of positive selection, particularly within 5' and 3' UTR regions, where regulatory elements are enriched. On the other, empirical observations of a fast turnover (lineage specific gain and loss) of transcription factor binding sites (TFBS) contrasts with striking functional conservation of other regulatory sequences, which has prompted many researchers to propose neutral evolution under functional constraint. However, a rigorous population genetics approach has not been applied to formally evaluate these and alternative hypotheses. In this study I specifically tested the alternative hypothesis of natural selection driving the turnover of TFBS, using Drosophila enhancers as an example. By combining a population genetic approach with a high-quality dataset of TFBS and a state-of-the-art microfluidics technology, I found that the patterns of divergence and polymorphism are not consistent with the neutral hypotheses. Instead they strongly suggested the action of positive selection both in the gain of new binding sites and also in their loss. Consistent with this finding is a nuanced, two-timescale view of regulatory evolution. Frequent and subtle changes in function can occur on a short timescale and drive adaptive changes, while constraints fundamental to developmental processes and genetic network interactions act as a centripetal force and assure functional stability of regulatory components and interactions across a longer timescale. This view is also supported by empirical findings of subtle yet significant differences in the expression patterns driven by orthologous enhancers, whose functions were previously considered unchanged.;The second part of my thesis explores a novel approach of using Drosophila natural variation to study the genetic architecture of human complex diseases. The question of identifying the polygenic basis for common human disorders have gained increasing attention, due both to the advances in technology that made genome wide association studies (GWAS) in human possible, and the rising incidence of common diseases that increasingly burden our societies. Hampering this effort, however, is the inability to resolve more basic questions about the types of mutations producing complex traits, their mechanism of action (and interaction), their frequencies in population and their magnitudes of effects. To overcome some of the limitations faced by human studies, such as a low mapping resolution and difficulty in performing functional analysis, we developed a fly model approach, in which we first constructed a model for a Mendelian disease trait, which was subsequently turned into a genetically complex trait by crossing the mutant line into a diverse genetic background (178 inbred lines derived from a wild Drosophila melanogaster population). Employing both traditional GWAS approaches and a novel extreme selection scheme, the aim was to identify both common and rare variants underlying the continuously variable disease trait, and to dissect their genetic and molecular effects. The fast decay of LD combined with complete genome sequences enabled us to narrow down the association peak to a 400bp block containing an insertion/deletion (indel) polymorphism in the intron region of the gene sfl. Experimental analysis established the functional link between sfl and the human mutant proinsulin induced neuro-degeneration phenotype. RNAi analysis of additional genes in the same pathway strongly suggested a previously unknown link between Heparan Sulfate Proteoglycan (HSPG) and cellular responses to misfolded proteins. Finally, by performing allelic specific expression analysis, we revealed the potential mechanism of the intronic variation, suggesting that changes in expression level of sfl may be the cause for phenotypic variation. (Abstract shortened by UMI.).
机译:在本文的第一部分,我研究了正选择在顺式调控进化中的作用。与编码区相比,在理论和实证研究中都已经确定了正选择在塑造自然变异模式中的重要性,而自然选择在顺式调控区中的作用则更具争议性。一方面,非编码DNA的全基因组扫描显示了强烈的阳性选择信号,特别是在5'和3'UTR区域内,这些区域富含调控元件。另一方面,对转录因子结合位点(TFBS)快速转换(谱系特定增益和丢失)的经验观察与其他调控序列惊人的功能保守性形成对比,这促使许多研究人员提出在功能约束下进行中性进化。但是,尚未采用严格的种群遗传学方法来正式评估这些假设和其他假设。在这项研究中,我以果蝇​​增强剂为例,专门测试了自然选择驱动TFBS转换的替代假设。通过将群体遗传方法与TFBS的高质量数据集和最新的微流体技术相结合,我发现发散和多态性的模式与中性假设不一致。取而代之的是,他们强烈建议在选择新的结合位点时以及在其丢失时,积极选择的作用。与这一发现相一致的是对监管演变的细致入微,两时尺度的观点。功能的频繁和细微变化可以在短时间内发生,并推动适应性变化,而发展过程和遗传网络相互作用的基本限制则作为向心力,并确保较长时间范围内监管组件和相互作用的功能稳定性。该观点也得到了直系同源增强子驱动的表达模式细微但显着差异的经验发现的支持,而直系同源增强子的功能先前被认为是不变的。论文的第二部分探索了一种使用果蝇自然变异研究遗传结构的新方法。人类复杂疾病。由于使人类可能进行全基因组关联研究(GWAS)的技术进步,以及日益加重我们社会负担的常见疾病的发病率,确定常见人类疾病的多基因基础问题日益受到关注。然而,阻碍这一努力的是无法解决有关产生复杂性状的突变类型,其作用机制(和相互作用),其种群频率及其影响程度等更基本的问题。为了克服人类研究所面临的某些局限性,例如低制图分辨率和执行功能分析的困难,我们开发了一种飞行模型方法,在该模型中,我们首先构建了孟德尔疾病性状的模型,随后将其转变为通过使突变体系进入不同的遗传背景(178种近交系来自野生果蝇的近交系)来实现遗传上的复杂性状。利用传统的GWAS方法和新颖的极端选择方案,目的是确定连续可变疾病性状的常见和罕见变体,并剖析其遗传和分子效应。 LD的快速衰变与完整的基因组序列相结合,使我们能够将缔合峰的范围缩小到一个400bp的区域,该区域在基因sfl的内含子区域包含一个插入/缺失(插入/缺失)多态性。实验分析建立了sfl和人类突变型胰岛素原诱导的神经变性表型之间的功能联系。对同一途径中其他基因的RNAi分析强烈表明,硫酸乙酰肝素蛋白聚糖(HSPG)与错误折叠的蛋白质的细胞反应之间存在未知的联系。最后,通过进行等位基因特异性表达分析,我们揭示了内含子变异的潜在机制,表明sfl表达水平的改变可能是表型变异的原因。 (摘要由UMI缩短。)。

著录项

  • 作者

    He, Bin.;

  • 作者单位

    The University of Chicago.;

  • 授予单位 The University of Chicago.;
  • 学科 Evolution development.;Medicine.;Genetics.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 145 p.
  • 总页数 145
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 宗教;
  • 关键词

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