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Prediction of Continuous Phenotypes in Mouse, Fly, and Rice Genome Wide Association Studies with Support Vector Regression SNPs and Ridge Regression Classifier

机译:支持向量回归SNP和岭回归分类器预测小鼠,果蝇和水稻全基因组关联研究中的连续表型

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The ranking of SNPs and prediction of phenotypes in continuous genome wide association studies is a subject of increasing interest with applications in personalized medicine and animal and plant breeding. The ranking of SNPs in case control (discrete label) genome wide association studies has been examined in several previous studies with machine learning techniques but this is poorly explored for studies with quantitative labels. Here we study ranking of SNPs in mouse, fly, and rice continuous genome wide association studies given by the popular univariate Pearson correlation coefficient and the multivariate support vector regression and ridge regression. We perform cross-validation with the support vector regression and ridge regression models on top ranked SNPs and compute correlation coefficients between true and predicted phenotypes. Our results show that ridge regression prediction with top ranked support vector regression SNPs gives the highest accuracy. On all datasets we achieve accuracies comparable to previously published values but with fewer SNPs. Our work shows we can learn parsimonious SNP models for predicting continuous labels in genome wide studies.
机译:在连续的全基因组关联研究中,SNP的排名和表型的预测随着个性化医学以及动植物育种的应用越来越引起人们的兴趣。在先前的一些使用机器学习技术的研究中,已经检查了病例对照(离散标签)全基因组关联研究中SNP的排名,但是对于定量标签的研究却鲜有探讨。在这里,我们研究由流行的单变量Pearson相关系数以及多元支持向量回归和岭回归给出的小鼠,果蝇和水稻连续基因组范围的全关联研究中SNP的排名。我们对排名靠前的SNP进行支持向量回归和岭回归模型的交叉验证,并计算真实表型和预测表型之间的相关系数。我们的结果表明,具有最高支持向量回归SNP的岭回归预测提供了最高的准确性。在所有数据集上,我们都获得了与以前公布的值相当的准确度,但SNP却更少。我们的工作表明,我们可以学习用于在全基因组研究中预测连续标记的简约SNP模型。

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