Cluster Analysis of SNPs with Entropy Distance and Prediction of Asthma Type Using SVM

Jungseob Lee, Ki-Seob Shin, K. Wee
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Abstract

Single nucleotide polymorphisms (SNPs) are a very important tool for the study of human genome structure. Cluster analysis of the large amount of gene expression data is useful for identifying biologically relevant groups of genes and for generating networks of gene-gene interactions. In this paper we compared the clusters of SNPs within asthma group and normal control group obtained by using hierarchical cluster analysis method with entropy distance. It appears that the 5-cluster collections of the two groups are significantly different. We searched the best set of SNPs that are useful for diagnosing the two types of asthma using representative SNPs of the clusters of the asthma group. Here support vector machines are used to evaluate the prediction accuracy of the selected combinations. The best combination model turns out to be the five-locus SNPs including one on the gene ALOX12 and their accuracy in predicting aspirin tolerant asthma disease risk among asthmatic patients is 66.41%.
基于熵距的snp聚类分析及SVM哮喘类型预测
单核苷酸多态性(snp)是研究人类基因组结构的重要工具。对大量基因表达数据进行聚类分析对于识别生物学上相关的基因群和生成基因-基因相互作用的网络是有用的。本文采用熵距分层聚类分析法对哮喘组与正常对照组的snp聚类进行了比较。两组的5聚类集合似乎有显著差异。我们使用哮喘组中具有代表性的snp群来搜索可用于诊断两种类型哮喘的最佳snp集。这里使用支持向量机来评估所选组合的预测精度。结果表明,最佳组合模型为ALOX12基因上的5位点snp,其预测哮喘患者阿司匹林耐受性哮喘疾病风险的准确率为66.41%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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