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Inferring Selective Constraint from Population Genomic Data Suggests Recent Regulatory Turnover in the Human Brain

机译:从人口基因组数据推断选择性约束表明人脑中最近的监管转变。

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摘要

The comparative genomics revolution of the past decade has enabled the discovery of functional elements in the human genome via sequence comparison. While that is so, an important class of elements, those specific to humans, is entirely missed by searching for sequence conservation across species. Here we present an analysis based on variation data among human genomes that utilizes a supervised machine learning approach for the identification of human-specific purifying selection in the genome. Using only allele frequency information from the complete low-coverage 1000 Genomes Project data set in conjunction with a support vector machine trained from known functional and nonfunctional portions of the genome, we are able to accurately identify portions of the genome constrained by purifying selection. Our method identifies previously known human-specific gains or losses of function and uncovers many novel candidates. Candidate targets for gain and loss of function along the human lineage include numerous putative regulatory regions of genes essential for normal development of the central nervous system, including a significant enrichment of gain of function events near neurotransmitter receptor genes. These results are consistent with regulatory turnover being a key mechanism in the evolution of human-specific characteristics of brain development. Finally, we show that the majority of the genome is unconstrained by natural selection currently, in agreement with what has been estimated from phylogenetic methods but in sharp contrast to estimates based on transcriptomics or other high-throughput functional methods.
机译:过去十年中比较基因组学的革命使得能够通过序列比较发现人类基因组中的功能元件。那样的话,搜索物种间的序列保守性就完全错过了一类重要的元素,这些元素是人类特有的。在这里,我们提出了一种基于人类基因组间变异数据的分析方法,该方法利用有监督的机器学习方法来鉴定基因组中人类特异性的纯化选择。仅使用来自完整的低覆盖率1000基因组计划数据集的等位基因频率信息,并结合从基因组的已知功能和非功能部分训练的支持向量机,我们就能够通过纯化选择来准确识别受约束的基因组部分。我们的方法可以识别以前已知的特定于人类的功能获得或丧失,并发现许多新颖的候选物。沿人类谱系获得功能或丧失功能的候选靶标包括许多对中枢神经系统正常发育必不可少的基因调控区域,包括在神经递质受体基因附近大量获得功能事件。这些结果与调节转换是大脑发育的人类特定特征进化的关键机制相一致。最后,我们表明,目前的大多数基因组不受自然选择的限制,这与从系统发育方法估计的结果一致,但与基于转录组学或其他高通量功能方法的估计形成鲜明对比。

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