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Machine-Learning Approaches for Classifying Haplogroup from Y Chromosome STR Data

机译:从Y染色体STR数据分类单倍群的机器学习方法

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摘要

Genetic variation on the non-recombining portion of the Y chromosome contains information about the ancestry of male lineages. Because of their low rate of mutation, single nucleotide polymorphisms (SNPs) are the markers of choice for unambiguously classifying Y chromosomes into related sets of lineages known as haplogroups, which tend to show geographic structure in many parts of the world. However, performing the large number of SNP genotyping tests needed to properly infer haplogroup status is expensive and time consuming. A novel alternative for assigning a sampled Y chromosome to a haplogroup is presented here. We show that by applying modern machine-learning algorithms we can infer with high accuracy the proper Y chromosome haplogroup of a sample by scoring a relatively small number of Y-linked short tandem repeats (STRs). Learning is based on a diverse ground-truth data set comprising pairs of SNP test results (haplogroup) and corresponding STR scores. We apply several independent machine-learning methods in tandem to learn formal classification functions. The result is an integrated high-throughput analysis system that automatically classifies large numbers of samples into haplogroups in a cost-effective and accurate manner.
机译:Y染色体非重组部分的遗传变异包含有关男性谱系祖先的信息。由于它们的低突变率,单核苷酸多态性(SNP)是将Y染色体明确分类为相关谱系(称为单倍群)的选择标记,它们倾向于在世界许多地方显示地理结构。但是,执行正确推断单倍体状态所需的大量SNP基因分型测试既昂贵又费时。这里介绍了一种将采样的Y染色体分配给单倍群的新方法。我们表明,通过应用现代的机器学习算法,我们可以通过对相对少量的Y连锁短串联重复序列(STR)进行评分,来高精度地推断出样本的正确Y染色体单倍群。学习基于多样化的真实数据集,该数据集包含SNP测试结果对(单元组)和相应的STR分数。我们结合应用几种独立的机器学习方法来学习形式分类函数。结果是一个集成的高通量分析系统,该系统可以以经济高效且准确的方式自动将大量样品分类为单倍组。

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