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Analysis and Prediction of Exon Skipping Events from RNA-Seq with Sequence Information Using Rotation Forest

机译:旋转森林中具有序列信息的RNA-Seq外显子跳跃事件的分析和预测

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摘要

In bioinformatics, exon skipping (ES) event prediction is an essential part of alternative splicing (AS) event analysis. Although many methods have been developed to predict ES events, a solution has yet to be found. In this study, given the limitations of machine learning algorithms with RNA-Seq data or genome sequences, a new feature, called RS (RNA-seq and sequence) features, was constructed. These features include RNA-Seq features derived from the RNA-Seq data and sequence features derived from genome sequences. We propose a novel Rotation Forest classifier to predict ES events with the RS features (RotaF-RSES). To validate the efficacy of RotaF-RSES, a dataset from two human tissues was used, and RotaF-RSES achieved an accuracy of 98.4%, a specificity of 99.2%, a sensitivity of 94.1%, and an area under the curve (AUC) of 98.6%. When compared to the other available methods, the results indicate that RotaF-RSES is efficient and can predict ES events with RS features.
机译:在生物信息学中,外显子跳跃(ES)事件预测是替代剪接(AS)事件分析的重要组成部分。尽管已开发出许多方法来预测ES事件,但尚未找到解决方案。在这项研究中,鉴于RNA-Seq数据或基因组序列的机器学习算法的局限性,构建了一个称为RS(RNA-seq和序列)特征的新功能。这些特征包括源自RNA-Seq数据的RNA-Seq特征和源自基因组序列的序列特征。我们提出了一种新颖的旋转森林分类器,以预测具有RS特征的ES事件(RotaF-RSES)。为了验证RotaF-RSES的功效,使用了来自两个人体组织的数据集,RotaF-RSES的准确度为98.4%,特异性为99.2%,灵敏度为94.1%,曲线下面积(AUC)为98.6%。与其他可用方法相比,结果表明RotaF-RSES是有效的,并且可以预测具有RS功能的ES事件。

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