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Gene- or region-based association study via kernel principal component analysis

机译:通过内核主成分分析进行基于基因或区域的关联研究

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摘要

BackgroundIn genetic association study, especially in GWAS, gene- or region-based methods have been more popular to detect the association between multiple SNPs and diseases (or traits). Kernel principal component analysis combined with logistic regression test (KPCA-LRT) has been successfully used in classifying gene expression data. Nevertheless, the purpose of association study is to detect the correlation between genetic variations and disease rather than to classify the sample, and the genomic data is categorical rather than numerical. Recently, although the kernel-based logistic regression model in association study has been proposed by projecting the nonlinear original SNPs data into a linear feature space, it is still impacted by multicolinearity between the projections, which may lead to loss of power. We, therefore, proposed a KPCA-LRT model to avoid the multicolinearity.
机译:背景技术在遗传关联研究中,尤其是在GWAS中,基于基因或区域的方法更流行于检测多种SNP与疾病(或性状)之间的关联。内核主成分分析结合逻辑回归测试(KPCA-LRT)已成功用于基因表达数据分类。尽管如此,关联研究的目的是检测遗传变异与疾病之间的相关性,而不是对样本进行分类,并且基因组数据是分类的而不是数值的。最近,尽管已经通过将非线性原始SNPs数据投影到线性特征空间中而提出了关联研究中的基于核的逻辑回归模型,但是它仍然受到投影之间的多重共线性的影响,这可能导致功率损失。因此,我们提出了一种KPCA-LRT模型来避免多重共线性。

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