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GenoSNP: a variational Bayes within-sample SNP genotyping algorithm that does not require a reference population

机译:GenoSNP:不需要参考种群的样本内SNP基因分型变异贝叶斯算法

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Current genotyping algorithms typically call genotypes by clustering allele-specific intensity data on a single nucleotide polymorphism (SNP) by SNP basis. This approach assumes the availability of a large number of control samples that have been sampled on the same array and platform. We have developed a SNP genotyping algorithm for the Illumina Infinium SNP genotyping assay that is entirely within-sample and does not require the need for a population of control samples nor parameters derived from such a population. Our algorithm exhibits high concordance with current methods and 99 call accuracy on HapMap samples. The ability to call genotypes using only within-sample information makes the method computationally light and practical for studies involving small sample sizes and provides a valuable independent quality control metric for other population-based approaches.
机译:当前的基因分型算法通常通过基于SNP在单核苷酸多态性(SNP)上聚类等位基因特异性强度数据来调用基因型。该方法假设已经在同一阵列和平台上采样了大量对照样品。我们已经为Illumina Infinium SNP基因分型测定法开发了一种SNP基因分型算法,该算法完全在样品内,不需要对照样品的群体,也不需要从该群体衍生的参数。我们的算法与HapMap样本的当前方法具有高度的一致性,并具有99个调用精度。仅使用样本内信息调用基因型的能力使该方法在计算上轻巧实用,适用于涉及小样本量的研究,并为其他基于人群的方法提供了宝贵的独立质量控制指标。

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