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High-throughput discovery of rare human nucleotide polymorphisms by Ecotilling

机译:通过Ecotilling高通量发现罕见的人类核苷酸多态性

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Human individuals differ from one another at only 0.1% of nucleotide positions, but these single nucleotide differences account for most heritable phenotypic variation. Large-scale efforts to discover and genotype human variation have been limited tocommon polymorphisms. However, these efforts overlook rare nucleotide changes that may contribute to phenotypic diversity and genetic disorders, including cancer. Thus, there is an increasing need for high-throughput methods to robustly detect rare nucleotide differences. Toward this end, we have adapted the mismatch discovery method known as Ecotilling for the discovery of human single nucleotide polymorphisms. To increase throughput and reduce costs, we developed a universal primer strategy and implemented algorithms for automated band detection. Ecotilling was validated by screening 90 human DNA samples for nucleotide changes in 5 gene targets and by comparing results to public resequencing data. To increase throughput for discovery of rare alleles,we pooled samples 8-fold and found Ecotilling to be efficient relative to resequencing, with a false negative rate of 5% and a false discovery rate of 4%. We identified 28 new rare alleles, including some that are predicted to damage protein function. The detection of rare damaging mutations has implications for models of human disease.
机译:人类个体仅在0.1%的核苷酸位置上彼此不同,但是这些单核苷酸差异导致了大多数可遗传的表型变异。发现和变异人类变异的基因型研究仅限于常见的多态性。但是,这些努力忽略了可能导致表型多样性和遗传疾病(包括癌症)的罕见核苷酸改变。因此,越来越需要高通量方法来稳健地检测稀有核苷酸差异。为此,我们已将称为Ecotilling的错配发现方法用于发现人类单核苷酸多态性。为了提高吞吐量并降低成本,我们开发了通用引物策略并实现了用于自动谱带检测的算法。通过筛选90个人类DNA样品中5个基因靶标中的核苷酸变化并将结果与​​公共重测序数据进行比较,验证了Ecotilling的有效性。为了增加发现稀有等位基因的通量,我们将样品合并了8倍,发现Ecotilling相对于重测序是有效的,假阴性率为5%,假发现率为4%。我们确定了28个新的罕见等位基因,包括一些预计会破坏蛋白质功能的等位基因。罕见破坏性突变的检测对人类疾病模型具有影响。

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