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RNA-seq data analysis using nonparametric Gaussian process models

机译:使用非参数高斯流程模型的RNA-SEQ数据分析

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This paper introduces an approach to classification of RNA-seq read count data using Gaussian process (GP) models. RNA-seq data are transformed into microarray-like data before applying the statistical two-sample t-test for gene selection. GP is designed as a classifier that takes discriminant genes selected by the t-test method as inputs. The proposed approach is verified by using two benchmark real datasets and the five-fold cross-validation strategy. Various performance metrics that include accuracy rate, F-measure, area under the ROC curve and mutual information are used to evaluate the classifiers. Experimental results show the significant dominance of the GP classifier against its competing methods including k-nearest neighbors, multilayer perceptron, support vector machine and ensemble learning AdaBoost. The proposed approach therefore can be implemented effectively in real practice for RNA-seq data analysis, which is useful in many applications related to disease diagnosis and monitoring at the molecular level.
机译:本文介绍了使用高斯过程(GP)模型进行RNA-SEQ读数数据分类的方法。在应用基因选择的统计两样T检验之前,将RNA-SEQ数据转化为微阵列的数据。 GP设计为采取由T-Test方法选择的判别基因作为输入。通过使用两个基准实际数据集和五倍交叉验证策略来验证所提出的方法。各种性能指标包括准确率,F测量,ROC曲线和互信息下的区域,用于评估分类器。实验结果表明,GP分类器对其竞争方法的显着优势,包括K-Interliby邻居,多层的Perceptron,支持向量机和集合学习Adaboost。因此,所提出的方法可以有效地在RNA-SEQ数据分析的实际实践中实施,这对于许多与疾病诊断和在分子水平监测有关的应用中有用。

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