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RFMirTarget: A Random Forest Classifier for Human miRNA Target Gene Prediction

机译:RFMirtarget:用于人体miRNA靶基因预测的随机林分类器

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MicroRNAs (miRNAs) are key regulators of eukaryotic gene expression whose fundamental role has been already identified in many cell pathways. The correct identification of miRNAs targets is a major challenge in bioinformatics. So far, machine learning-based methods for miRNA-target prediction have shown the best results in terms of specificity and sensitivity. However, despite its well-known efficiency in other classifying tasks, the random forest algorithm has not been employed in this problem. Therefore, in this work we present RFMirTarget, an efficient random forest miRNA-target prediction system. Our tool analyzes the alignment between a candidate miRNA-target pair and extracts a set of structural, thermodynamics, alignment and position-based features. Experiments have shown that RFMirTarget achieves a Matthew's correlation coefficient nearly 48% greater than the performance reported for the MultiMiTar, which was trained upon the same data set. In addition, tests performed with RFMirTarget reinforce the importance of the seed region for target prediction accuracy.
机译:Micrornas(miRNA)是真核基因表达的关键调节因子,其基本作用已经在许多细胞途径中鉴定出来。 MiRNA目标的正确识别是生物信息学中的主要挑战。到目前为止,基于机器学习的miRNA-target预测方法已经表明了在特异性和灵敏度方面的最佳结果。然而,尽管其在其他分类任务中具有众所周知的效率,但在此问题中未采用随机林算法。因此,在这项工作中,我们呈现RFMirtarget,一个有效的随机森林miRNA-靶预测系统。我们的工具分析候选MiRNA-Target对之间的对齐,并提取一组结构,热力学,对准和基于位置的特征。实验表明,RFMirtarget实现了Matthew的相关系数比对于多层报告的性能,近48%,这是在同一数据集上训练的。此外,用RFMirtarget进行的测试加强了种子区域的目标预测精度的重要性。

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