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Adaboost-SVM-based probability algorithm for the prediction of all mature miRNA sites based on structured-sequence features

机译:基于Adaboost-SVM的概率算法可基于结构化序列特征预测所有成熟的miRNA位点

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摘要

The significant role of microRNAs (miRNAs) in various biological processes and diseases has been widely studied and reported in recent years. Several computational methods associated with mature miRNA identification suffer various limitations involving canonical biological features extraction, class imbalance, and classifier performance. The proposed classifier, miRFinder, is an accurate alternative for the identification of mature miRNAs. The structured-sequence features were proposed to precisely extract miRNA biological features, and three algorithms were selected to obtain the canonical features based on the classifier performance. Moreover, the center of mass near distance training based on K-means was provided to improve the class imbalance problem. In particular, the AdaBoost-SVM algorithm was used to construct the classifier. The classifier training process focuses on incorrectly classified samples, and the integrated results use the common decision strategies of the weak classifier with different weights. In addition, the all mature miRNA sites were predicted by different classifiers based on the features of different sites. Compared with other methods, the performance of the classifiers has a high degree of efficacy for the identification of mature miRNAs. MiRFinder is freely available at .
机译:近年来,microRNA(miRNA)在各种生物学过程和疾病中的重要作用已得到广泛研究和报道。与成熟的miRNA识别相关的几种计算方法受到各种限制,包括规范的生物学特征提取,类别不平衡和分类器性能。拟议的分类器miRFinder是识别成熟miRNA的准确替代方法。提出了结构化序列特征以精确提取miRNA的生物学特征,并基于分类器性能选择了三种算法来获得典型特征。此外,提供了基于K均值的质心近距离训练中心,以改善班级失衡问题。特别是,使用AdaBoost-SVM算法来构造分类器。分类器训练过程集中在错误分类的样本上,综合结果使用权重不同的弱分类器的通用决策策略。此外,所有成熟的miRNA位点是由不同的分类器根据不同位点的特征预测的。与其他方法相比,分类器的性能对鉴定成熟的miRNA具有很高的功效。可通过访问免费获得MiRFinder。

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