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A flexible method for estimating the fraction of fitness influencing mutations from large sequencing data sets

机译:一种从大型测序数据集中估算适应性影响突变比例的灵活方法

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摘要

A continuing challenge in the analysis of massively large sequencing data sets is quantifying and interpreting non-neutrally evolving mutations. Here, we describe a flexible and robust approach based on the site frequency spectrum to estimate the fraction of deleterious and adaptive variants from large-scale sequencing data sets. We applied our method to approximately 1 million single nucleotide variants (SNVs) identified in high-coverage exome sequences of 6515 individuals. We estimate that the fraction of deleterious nonsynonymous SNVs is higher than previously reported; quantify the effects of genomic context, codon bias, chromatin accessibility, and number of protein–protein interactions on deleterious protein-coding SNVs; and identify pathways and networks that have likely been influenced by positive selection. Furthermore, we show that the fraction of deleterious nonsynonymous SNVs is significantly higher for Mendelian versus complex disease loci and in exons harboring dominant versus recessive Mendelian mutations. In summary, as genome-scale sequencing data accumulate in progressively larger sample sizes, our method will enable increasingly high-resolution inferences into the characteristics and determinants of non-neutral variation.
机译:在分析大型测序数据集时,一个持续的挑战是量化和解释非中性进化突变。在这里,我们描述了一种基于站点频谱的灵活而健壮的方法,可以从大规模测序数据集中估算有害和自适应变体的比例。我们将我们的方法应用于在6515个人的高覆盖率外显子组序列中鉴定的大约一百万个单核苷酸变体(SNV)。我们估计,有害的非同义SNV比例要高于先前报道的水平;量化基因组背景,密码子偏倚,染色质可及性以及蛋白质-蛋白质相互作用数量对有害蛋白质编码SNV的影响;并确定可能受到积极选择影响的途径和网络。此外,我们表明,孟德尔相对于复杂疾病位点以及在隐性孟德尔突变与隐性孟德尔突变的外显子中,有害的非同义SNV分数要高得多。总之,随着基因组规模的测序数据在越来越大的样本量中累积,我们的方法将能够以越来越高的分辨率推断出非中性变异的特征和决定因素。

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