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Features in Identification Approaches for MicroRNA Precursors Based on Machine Learning

机译:基于机器学习的MicroRNA前体识别方法的特征

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MicroRNAs (miRNAs) are a group of non-coding small RNA of ~ 22 nucleotides in length. They play important roles in gene regulation in animals and plants. The machine learning approach has become an important way to discover miRNAs, which is complement to experimental approaches. Feature selection is the key step of machine learning approaches to discover miRNA precursors. The performance and generalization ability of classifier is affected by the feature set. Features of miRNA precursors used in machine learning approaches were summarized in this review. According to the properties of features to distinguish the miRNA precursors and the non-miRNA precursors, features were categorized into three classes: sequence features, structure features, structure sequence features.
机译:microRNA(miRNA)是一组非编码小RNA的长度为约22个核苷酸。它们在动物和植物中的基因调节中发挥着重要作用。机器学习方法已成为发现miRNA的重要途径,这是对实验方法的补充。特征选择是发现miRNA前体的机器学习方法的关键步骤。分类器的性能和泛化能力受特征集的影响。在本综述中总结了机器学习方法中使用的miRNA前体的特征。根据特征的性质来区分miRNA前体和非miRNA前体,特征分为三类:序列特征,结构特征,结构序列功能。

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