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MicroRNA prediction based on 3D graphical representation of RNAsecondary structures

机译:基于RNA二级结构的3D图形表示的MicroRNA预测

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MicroRNAs (miRNAs) are posttranscriptional regulators of gene expression. While a miRNA can target hundreds of messengerRNA (mRNAs), an mRNA can be targeted by different miRNAs, not to mention that a single miRNA might have various bindingsites in an mRNA sequence. Therefore, it is quite involved to investigate miRNAs experimentally. Thus, machine learning (ML) isfrequently used to overcome such challenges. The key parts of a ML analysis largely depend on the quality of input data and the capacityof the features describing the data. Previously, more than 1000 features were suggested for miRNAs. Here, it is shown that using 36features representing the RNA secondary structure and its dynamic 3D graphical representation provides up to 98% accuracy values.In this study, a new approach for ML-based miRNA prediction is proposed. Thousands of models are generated through classificationof known human miRNAs and pseudohairpins with 3 classifiers decision tree, na?ve Bayes, and random forest. Although the methodis based on human data, the best model was able to correctly assign 96% of nonhuman hairpins from MirGeneDB, suggesting that thisapproach might be useful for the analysis of miRNAs from other species.
机译:MicroRNA(miRNA)是基因表达的转录后调节因子。尽管miRNA可以靶向数百个Messenger DNA(mRNA),但mRNA可以被不同的miRNA靶向,更不用说单个miRNA在mRNA序列中可能具有多种结合位点。因此,通过实验研究miRNA涉及相当多。因此,机器学习(ML)经常用于克服这些挑战。机器学习分析的关键部分在很大程度上取决于输入数据的质量和描述数据的功能。以前,建议对miRNA使用1000多种功能。在此显示使用36个代表RNA二级结构的特征及其动态3D图形表示可提供高达98%的准确度值。在这项研究中,提出了一种用于基于ML的miRNA预测的新方法。通过使用3个分类器决策树,纯朴素贝叶斯和随机森林对已知的人类miRNA和假发夹进行分类,生成了数千个模型。尽管该方法基于人类数据,但最好的模型能够正确分配来自MirGeneDB的96%的非人类发夹,这表明该方法可能对分析其他物种的miRNA有用。

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