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A Robust Feature Selection Method for Novel Pre-microRNA Identification Using a Combination of Nucleotide-Structure Triplets

机译:一种使用核苷酸结构三态组合的新型前微小RNA鉴定的鲁棒特征选择方法

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MicroRNAs are a class of small non-coding RNAs that play an important role in post-transcriptional regulation of gene products. Identification of novel microRNA is difficult because the validated microRNA set is still small in size and diverse. Existing feature selection methods use different combinations of features related to the biogenesis of microRNAs, but performance evaluations are not comprehensive. We developed a robust feature selection method using a combination of three types of nucleotide-structure triplets, the minimum free energy of the secondary structure of precursor microRNAs and other extracted characteristics. We compared our new combination feature set and three other previously published sets using three different classifiers: logistic regression, support vector machine, and random forest. Our proposed feature set was not only robust across all classifier methods, but also had the highest classification performance, as measured by the area under the ROC curve.
机译:MicroRNA是一类小型非编码RNA,在基因产物的转录后调节中发挥着重要作用。新颖的MicroRNA识别很困难,因为经过验证的MicroRNA套件仍然较小,不同。现有特征选择方法使用与MicroRNA的生物发生相关的特征的不同组合,但绩效评估并不全面。我们使用三种类型的核苷酸结构三体组合开发了一种稳健的特征选择方法,前体微瘤的二次结构的最小自由能和其他提取的特性。我们比较了我们的新组合功能集和三个以前发布了三个不同的分类器:Logistic回归,支持向量机和随机林。我们提出的功能集不仅具有跨越所有分类方法的强大,而且具有最高的分类性能,由ROC曲线下的区域测量。

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