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A new approach to human microRNA target prediction using ensemble pruning and rotation foreste

机译:使用整体修剪和旋转森林进行人microRNA靶标预测的新方法

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MicroRNAs (miRNAs) are small non-coding RNAs that have important functions in gene regulation. Since finding miRNA target experimentally is costly and needs spending much time, the use of machine learning methods is a growing research area for miRNA target prediction. In this paper, a new approach is proposed by using two popular ensemble strategies, i.e. Ensemble Pruning and Rotation Forest (EP-RTF), to predict human miRNA target. For EP, the approach utilizes Genetic Algorithm (GA). In other words, a subset of classifiers from the heterogeneous ensemble is first selected by GA. Next, the selected classifiers are trained based on the RTF method and then are combined using weighted majority voting. In addition to seeking a better subset of classifiers, the parameter of RTF is also optimized by GA. Findings of the present study confrim that the newly developed EP-RTF outperforms (in terms of classification accuracy, sensitivity, and specificity) the previously applied methods over four datasets in the field of human miRNA target. Diversity-error diagrams reveal that the proposed ensemble approach constructs individual classifiers which are more accurate and usually diverse than the other ensemble approaches. Given these experimental results, we highly recommend EP-RTF for improving the performance of miRNA target prediction.
机译:微小RNA(miRNA)是小的非编码RNA,在基因调控中具有重要功能。由于通过实验找到miRNA靶标的成本很高并且需要花费大量时间,因此机器学习方法的使用正在成为miRNA靶标预测的研究领域。在本文中,通过使用两种流行的整体策略(即整枝修剪和轮作林(EP-RTF))来预测人类miRNA靶标,提出了一种新方法。对于EP,该方法利用遗传算法(GA)。换句话说,GA首先选择了来自异类集合的分类器子集。接下来,基于RTF方法训练所选分类器,然后使用加权多数投票进行合并。除了寻找更好的分类器子集之外,GA还优化了RTF的参数。本研究的结果证实,新开发的EP-RTF在人类miRNA靶标领域的四个数据集上优于(在分类准确性,敏感性和特异性方面)以前应用的方法。分集误差图表明,所提出的集成方法构造了单独的分类器,该分类器比其他集成方法更准确,通常是多样化的。鉴于这些实验结果,我们强烈建议使用EP-RTF来改善miRNA靶标预测的性能。

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