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Integrating common and rare genetic variation in diverse human populations

机译:整合不同人群中常见和罕见的遗传变异

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Despite great progress in identifying genetic variants that influence human disease, most inherited risk remains unexplained. A more complete understanding requires genome-wide studies that fully examine less common alleles in populations with a wide range of ancestry. To inform the design and interpretation of such studies, we genotyped 1.6 million common single nucleotide polymorphisms (SNPs) in 1,184 reference individuals from 11 global populations, and sequenced ten 100-kilobase regions in 692 of these individuals. This integrated data set of common and rare alleles, called 'HapMap 3', includes both SNPs and copy number polymorphisms (CNPs). We characterized population-specific differences among low-frequency variants, measured the improvement in imputation accuracy afforded by the larger reference panel, especially in imputing SNPs with a minor allele frequency of ≤5%, and demonstrated the feasibility of imputing newly discovered CNPs and SNPs. This expanded public resource of genome variants in global populations supports deeper interrogation of genomic variation and its role in human disease, and serves as a step towards a high-resolution map of the landscape of human genetic variation.
机译:尽管在鉴定影响人类疾病的遗传变异方面取得了巨大进展,但大多数遗传风险仍然无法解释。要获得更全面的了解,就需要对全基因组范围广泛的人群中不常见的等位基因进行全面检查的全基因组研究。为了指导此类研究的设计和解释,我们在来自11个全球人群的1,184个参考个体中对160万个常见单核苷酸多态性(SNP)进行了基因分型,并对其中692个中的10个100碱基碱基区域进行了测序。这种常见和稀有等位基因的集成数据集称为“ HapMap 3”,既包含SNP,也包含拷贝数多态性(CNP)。我们表征了低频变异体之间的特定人群差异,测量了较大参考面板提供的估算准确性的提高,尤其是在等位基因频率≤5%的SNP估算中,并证明了估算新发现的CNP和SNP的可行性。全球人群中扩大的基因组变异公共资源支持对基因组变异及其在人类疾病中的作用的更深层次的审视,并且是迈向高分辨率人类遗传变异图谱的一步。

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  • 来源
    《Nature》 |2010年第7311期|P.52-58|共7页
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  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
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  • 正文语种 eng
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