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Genotype Combinations Linked to Phenotype Subgroups in Autism Spectrum Disorders

机译:基因型组合链接到自闭症谱系障碍的表型亚组。

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This paper investigates a computational model that allows for systematic comparison of phenotype data with genotype (Single Nucleotide Polymorphisms (SNPs)) data based on machine learning techniques to identify discriminant genotype markers associated with the phenotypic subgroups. The proposed discriminant SNP identifier model is empirically evaluated using Autism Spectrum Disorder (ASD) simplex sample. Six phenotype markers were selected to cluster the sample in a hexagonal lattice format yielding five multidimensional subgroups based on extremities of the phenotype markers. The SNP selection model includes random subspace selection of SNPs in conjunction with feature selection algorithms to determine which set of SNPs were discriminant among these five subgroups. This yielded a set of SNPs that attained a mean ROC performance of 95% using a Support Vector Machine prediction model. Biological analysis of these SNPs and associated genes across the subgroups is presented to examine their potential clinical significance.
机译:本文研究了一种计算模型,该模型可基于机器学习技术对表型数据与基因型(单核苷酸多态性(SNP))数据进行系统比较,以识别与表型亚组相关的判别基因型标记。使用自闭症谱系障碍(ASD)单纯形样本对根据经验评估提出的判别式SNP标识符模型。选择六个表型标记,以六边形格子格式将样品聚类,根据表型标记的末端,产生五个多维亚组。 SNP选择模型包括SNP的随机子空间选择以及特征选择算法,以确定哪五个SNP组在这五个子组中有区别。这产生了一组SNP,使用支持向量机预测模型可实现95%的平均ROC性能。提出了这些亚组中这些SNP及其相关基因的生物学分析,以检查其潜在的临床意义。

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