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首页> 外文期刊>BMC Bioinformatics >MegaSNPHunter: a learning approach to detect disease predisposition SNPs and high level interactions in genome wide association study
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MegaSNPHunter: a learning approach to detect disease predisposition SNPs and high level interactions in genome wide association study

机译:MegaSNPHunter:一种在全基因组关联研究中检测疾病易感性SNP和高水平相互作用的学习方法

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Background The interactions of multiple single nucleotide polymorphisms (SNPs) are highly hypothesized to affect an individual's susceptibility to complex diseases. Although many works have been done to identify and quantify the importance of multi-SNP interactions, few of them could handle the genome wide data due to the combinatorial explosive search space and the difficulty to statistically evaluate the high-order interactions given limited samples. Results Three comparative experiments are designed to evaluate the performance of MegaSNPHunter. The first experiment uses synthetic data generated on the basis of epistasis models. The second one uses a genome wide study on Parkinson disease (data acquired by using Illumina HumanHap300 SNP chips). The third one chooses the rheumatoid arthritis study from Wellcome Trust Case Control Consortium (WTCCC) using Affymetrix GeneChip 500K Mapping Array Set. MegaSNPHunter outperforms the best solution in this area and reports many potential interactions for the two real studies. Conclusion The experimental results on both synthetic data and two real data sets demonstrate that our proposed approach outperforms the best solution that is currently available in handling large-scale SNP data both in terms of speed and in terms of detection of potential interactions that were not identified before. To our knowledge, MegaSNPHunter is the first approach that is capable of identifying the disease-associated SNP interactions from WTCCC studies and is promising for practical disease prognosis.
机译:背景高度假设多个单核苷酸多态性(SNP)的相互作用会影响个体对复杂疾病的易感性。尽管已经进行了许多工作来鉴定和量化多SNP相互作用的重要性,但是由于组合爆炸物搜索空间以及在给定有限样本的情况下难以对高阶相互作用进行统计学评估的原因,因此很少能处理全基因组数据。结果设计了三个比较实验来评估MegaSNPHunter的性能。第一个实验使用基于上位性模型生成的综合数据。第二篇使用有关帕金森病的全基因组研究(通过使用Illumina HumanHap300 SNP芯片获得的数据)。第三个选择使用Affymetrix GeneChip 500K映射阵列集从Wellcome Trust病例对照协会(WTCCC)中选择类风湿性关节炎研究。 MegaSNPHunter胜过了该领域的最佳解决方案,并报告了这两项实际研究的许多潜在相互作用。结论在合成数据和两个真实数据集上的实验结果表明,我们提出的方法在速度和检测潜在相互作用方面均优于目前处理大规模SNP数据的最佳解决方案。之前。据我们所知,MegaSNPHunter是第一种能够从WTCCC研究中鉴定与疾病相关的SNP相互作用的方法,并且有望在实际疾病预后中发挥作用。

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