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Poor Man’s 1000 Genome Project: Recent Human Population Expansion Confounds the Detection of Disease Alleles in 7098 Complete Mitochondrial Genomes

机译:可怜的人的1000个基因组计划:最近的人口膨胀混淆了7098个完整的线粒体基因组中疾病等位基因的检测

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摘要

Rapid growth of the human population has caused the accumulation of rare genetic variants that may play a role in the origin of genetic diseases. However, it is challenging to identify those rare variants responsible for specific diseases without genetic data from an extraordinarily large population sample. Here we focused on the accumulated data from the human mitochondrial (mt) genome sequences because this data provided 7,098 whole genomes for analysis. In this dataset we identified 6,110 single nucleotide variants (SNVs) and their frequency and determined that the best-fit demographic model for the 7,098 genomes included severe population bottlenecks and exponential expansions of the non-African population. Using this model, we simulated the evolution of mt genomes in order to ascertain the behavior of deleterious mutations. We found that such deleterious mutations barely survived during population expansion. We derived the threshold frequency of a deleterious mutation in separate African, Asian, and European populations and used it to identify pathogenic mutations in our dataset. Although threshold frequency was very low, the proportion of variants showing a lower frequency than that threshold was 82, 83, and 91% of the total variants for the African, Asian, and European populations, respectively. Within these variants, only 18 known pathogenic mutations were detected in the 7,098 genomes. This result showed the difficulty of detecting a pathogenic mutation within an abundance of rare variants in the human population, even with a large number of genomes available for study.
机译:人口的快速增长导致稀有遗传变异的积累,这些变异可能在遗传疾病的起源中起作用。但是,要从那些非常大的人群样本中获得遗传数据而又无法鉴定出那些导致特定疾病的罕见变体就具有挑战性。在这里,我们集中于人类线粒体(mt)基因组序列的累积数据,因为该数据提供了7,098个完整基因组进行分析。在该数据集中,我们确定了6,110个单核苷酸变体(SNV)及其频率,并确定了7,098个基因组的最适合人口统计学模型包括严重的人口瓶颈和非非洲人口的指数扩展。使用该模型,我们模拟了mt基因组的进化,以确定有害突变的行为。我们发现,这种有害的突变在种群扩展期间几乎无法幸存。我们得出了非洲,亚洲和欧洲不同人群中有害突变的阈值频率,并用它来识别数据集中的致病突变。尽管阈值频率非常低,但显示出低于该阈值频率的变体比例分别为非洲,亚洲和欧洲人口的总变体的82%,83%和91%。在这些变体中,在7,098个基因组中仅检测到18个已知的致病突变。该结果表明,即使有大量可用于研究的基因组,也难以在人群中发现大量罕见变体中的致病突变。

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