首页> 外文会议>International Conference on Fuzzy Systems and Knowledge Discovery(FSKD 2005) pt.2; 20050827-29; Changsha(CN) >Application of a Genetic Algorithm — Support Vector Machine Hybrid for Prediction of Clinical Phenotypes Based on Genome-Wide SNP Profiles of Sib Pairs
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Application of a Genetic Algorithm — Support Vector Machine Hybrid for Prediction of Clinical Phenotypes Based on Genome-Wide SNP Profiles of Sib Pairs

机译:遗传算法—支持向量机混合在基于同胞对全基因组SNP谱预测临床表型中的应用

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Large-scale genome-wide genetic profiling using markers of single nucleotide polymorphisms (SNPs) has offered the opportunities to investigate the possibility of using those biomarkers for predicting genetic risks. Because of the special data structure characterized with a high dimension, signal-to-noise ratio and correlations between genes, but with a relative small sample size, the data analysis needs special strategies. We propose a robust data reduction technique based on a hybrid between genetic algorithm and support vector machine. The major goal of this hybridization is to fully exploit their respective merits (e.g., robustness to the size of solution space and capability of handling a very large dimension of features) for identification of key SNP features for risk prediction. We have applied the approach to the Genetic Analysis Workshop 14 COGA data to predict affection status of a sib pair based on genome-wide SNP identical-by-decent (IBD) informatics. This application has demonstrated its potential to extract useful information from the massive SNP data.
机译:使用单核苷酸多态性(SNP)标记进行大规模的全基因组遗传谱分析,为研究使用这些生物标记物预测遗传风险的可能性提供了机会。由于特殊的数据结构具有高维,信噪比和基因之间的相关性,但样本量相对较小,因此数据分析需要特殊的策略。我们提出了一种基于遗传算法和支持向量机混合的鲁棒数据约简技术。这种杂交的主要目的是充分利用它们各自的优点(例如,对解决方案空间大小的鲁棒性和处理非常大尺寸特征的能力),以识别用于风险预测的关键SNP特征。我们已将该方法应用于遗传分析研讨会14的COGA数据,以基于全基因组SNP体面相同(IBD)信息学预测同胞对的患病状况。此应用程序已证明其从大量SNP数据中提取有用信息的潜力。

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