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A Multifactor Dimensionality Reduction Based Associative Classification for Detecting SNP Interactions

机译:基于多因素的维度缩短了检测SNP交互的关联分类

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摘要

Identification and characterization of interactions between genes have been increasingly explored in current Genome-wide association studies (GWAS). Several machine learning and data mining approaches have been proposed to identify the multi-locus interactions in higher order genomic data. However, detecting these interactions is challenging due to bio-molecular complexities and computational limitations. In this paper, a multifactor dimensionality reduction based associative classifier is proposed for detecting SNP interactions in genetic epidemiological studies. The approach is evaluated for one to six loci models by varying heritability, minor allele frequency, case-control ratios and sample size. The experimental results demonstrated significant improvements in accuracy for detecting interacting single nucleotide polymorphisms (SNPs) responsible for complex diseases when compared to the previous approaches. Further, the approach was successfully evaluated by using sporadic breast cancer data. The results show interactions among five polymorphisms in three different estrogen-metabolism genes.
机译:目前基因组关联研究(GWAs)越来越多地探讨基因之间相互作用的鉴定和表征。已经提出了几种机器学习和数据挖掘方法来确定高阶基因组数据中的多基因座相互作用。然而,由于生物分子复杂性和计算限制,检测这些相互作用是挑战。本文提出了一种基于多因素维度降低的缔合分类剂,用于检测遗传流行病学研究中的SNP相互作用。该方法通过不同的可遗传性,次要等位基因频率,壳体控制比和样本大小来评估一到六个基因座模型。实验结果表明,与先前的方法相比,检测负责复杂疾病的相互作用的单核苷酸多态性(SNP)的准确性显着改善。此外,通过使用散发性乳腺癌数据成功评估该方法。结果显示了三种不同雌激素代谢基因的五种多态性之间的相互作用。

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