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Shrunken Dissimilarity Measure for Genome-wide SNP Data Classification

机译:全基因组SNP数据分类的收缩差异测度

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Recent development of high-resolution single-nucleotide polymorphism (SNP) arrays allows detailed assessment of genome-wide human genome variations. However, SNP data typically has a large number of SNPs (e,g., 400 thousand SNPs in genome-wide Parkinson disease SNP data) and a few hundred of samples. Conventional classification methods may not be effective when applied to such genome-wide SNP data. In this paper, we propose to develop and use shrunken dissimilarity measure to analyze and select relevant SNPs for classification problems. Examples for HapMap data and Parkinson data are given to demonstrate the effectiveness of the proposed method and illustrate it has the potential to become a useful analysis tool for SNP data sets. In particular, we find some SNPs in chromosome 2 that they contain in some genes which is relevant to Parkinson disease.
机译:高分辨率单核苷酸多态性(SNP)阵列的最新发展允许对全基因组人类基因组变异进行详细评估。但是,SNP数据通常具有大量的SNP(例如,全基因组帕金森病SNP数据中的40万个SNP)和几百个样本。当应用于此类全基因组SNP数据时,常规分类方法可能无效。在本文中,我们建议开发并使用缩小的相异性度量来分析和选择用于分类问题的相关SNP。给出了HapMap数据和Parkinson数据的示例,以证明所提出方法的有效性,并说明它有可能成为SNP数据集的有用分析工具。特别是,我们在2号染色体上发现了一些SNP,这些SNP包含在与帕金森氏病有关的某些基因中。

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