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Classification of Real and Pseudo pre-miRNAs in Plant Species

机译:真实和伪pre-miRNA在植物物种中的分类

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Micro-RNAs (miRNAs) are an important class of small non-coding RNAs which play a crucial role in gene regulation at the translational level. Both perfect and nearly perfect binding of miRNAs through base complementary could cause translation inhibition. Identification of miRNAs in organisms has mostly been focused on precursors of miRNAs (pre-miRNAs). These pre-miRNAs are found only in non-coding regions. However, pseudo pre-miRNAs, which are RNA sequences in the coding region, can be folded as hairpin structures. The classification of real and pseudo miRNAs is more complicated for plants, when compared to animals, due to their wider diversity. This study aims to extract the features of pre-miRNAs for classifying real and pseudo pre-miRNAs in plants and compare classification performance of five different machine learning approaches. Stochastic-based Random Forest and Na?ve Bayes Classifier showed the best classification performance with over 90% accuracy using 10-fold cross-validation and over 85% accuracy using cross-dataset validation.
机译:微小RNA(miRNA)是一类重要的小型非编码RNA,它们在翻译水平的基因调控中起着至关重要的作用。通过碱基互补的miRNA完美结合和近乎完美结合都可能导致翻译抑制。生物体中miRNA的鉴定主要集中在miRNA的前体(pre-miRNA)上。这些pre-miRNA仅在非编码区存在。然而,伪pre-miRNA(其为编码区中的RNA序列)可以折叠为发夹结构。与动物相比,植物对真实和伪miRNA的分类更为复杂,因为它们具有更广泛的多样性。这项研究旨在提取pre-miRNA的特征以对植物中的真实和伪pre-miRNA进行分类,并比较五种不同机器学习方法的分类性能。基于随机的随机森林和朴素贝叶斯分类器显示最佳分类性能,使用10倍交叉验证的准确性超过90%,使用交叉数据集验证的准确性超过85%。

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