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Artificial neural network approach for selection of susceptible single nucleotide polymorphisms and construction of prediction model on childhood allergic asthma

机译:人工神经网络方法选择易感单核苷酸多态性及儿童过敏性哮喘预测模型的构建

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Background Screening of various gene markers such as single nucleotide polymorphism (SNP) and correlation between these markers and development of multifactorial disease have previously been studied. Here, we propose a susceptible marker-selectable artificial neural network (ANN) for predicting development of allergic disease. Results To predict development of childhood allergic asthma (CAA) and select susceptible SNPs, we used an ANN with a parameter decreasing method (PDM) to analyze 25 SNPs of 17 genes in 344 Japanese people, and select 10 susceptible SNPs of CAA. The accuracy of the ANN model with 10 SNPs was 97.7% for learning data and 74.4% for evaluation data. Important combinations were determined by effective combination value (ECV) defined in the present paper. Effective 2-SNP or 3-SNP combinations were found to be concentrated among the 10 selected SNPs. Conclusion ANN can reliably select SNP combinations that are associated with CAA. Thus, the ANN can be used to characterize development of complex diseases caused by multiple factors. This is the first report of automatic selection of SNPs related to development of multifactorial disease from SNP data of more than 300 patients.
机译:背景技术先前已经研究了各种基因标志物的筛选,例如单核苷酸多态性(SNP)以及这些标志物之间的相关性以及多因素疾病的发展。在这里,我们提出了一种易感标记选择人工神经网络(ANN),用于预测过敏性疾病的发展。结果为了预测儿童过敏性哮喘(CAA)的发展并选择易感SNP,我们使用参数减少法(PDM)的ANN分析了344位日本人中17个基因的25个SNP,并选择了10个CAA易感SNP。具有10个SNP的ANN模型的准确性对于学习数据为97.7%,对于评估数据为74.4%。重要组合由本文定义的有效组合值(ECV)确定。发现有效的2-SNP或3-SNP组合集中在10个选定的SNP中。结论ANN可以可靠地选择与CAA相关的SNP组合。因此,人工神经网络可用于表征由多种因素引起的复杂疾病的发展。这是首次从300多个患者的SNP数据中自动选择与多因素疾病发展相关的SNP的报告。

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