首页> 美国卫生研究院文献>International Journal of Molecular Sciences >lncRNA_Mdeep: An Alignment-Free Predictor for Distinguishing Long Non-Coding RNAs from Protein-Coding Transcripts by Multimodal Deep Learning
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lncRNA_Mdeep: An Alignment-Free Predictor for Distinguishing Long Non-Coding RNAs from Protein-Coding Transcripts by Multimodal Deep Learning

机译:LNCRNA_MDEEP:通过多模式深度学习区分从蛋白质编码转录物中区分长非编码RNA的对齐预测器

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摘要

Long non-coding RNAs (lncRNAs) play crucial roles in diverse biological processes and human complex diseases. Distinguishing lncRNAs from protein-coding transcripts is a fundamental step for analyzing the lncRNA functional mechanism. However, the experimental identification of lncRNAs is expensive and time-consuming. In this study, we presented an alignment-free multimodal deep learning framework (namely lncRNA_Mdeep) to distinguish lncRNAs from protein-coding transcripts. LncRNA_Mdeep incorporated three different input modalities, then a multimodal deep learning framework was built for learning the high-level abstract representations and predicting the probability whether a transcript was lncRNA or not. LncRNA_Mdeep achieved 98.73% prediction accuracy in a 10-fold cross-validation test on humans. Compared with other eight state-of-the-art methods, lncRNA_Mdeep showed 93.12% prediction accuracy independent test on humans, which was 0.94%~15.41% higher than that of other eight methods. In addition, the results on 11 cross-species datasets showed that lncRNA_Mdeep was a powerful predictor for predicting lncRNAs.
机译:长期非编码RNA(LNCRNA)在不同的生物过程和人类复杂疾病中起重要作用。将LNCRNA与蛋白质编码转录物区别为分析LNCRNA官能机制的基本步骤。然而,LNCRNA的实验识别昂贵且耗时。在这项研究中,我们介绍了一种无序的多模式深度学习框架(即lncrna_mdeep),以区分LNCRNA与蛋白质编码转录物。 LNCRNA_MDEEP包含三种不同的输入方式,然后建立了一个多模式深度学习框架,用于学习高级摘要表示,并预测转录物是否为LNCRNA。 LNCRNA_MDEEP在人类的10倍交叉验证测试中实现了98.73%的预测精度。与其他八种最先进的方法相比,LNCRNA_MDEEP对人类进行了93.12%的预测精度,比其他八种方法的预测精度独立检验为0.94%〜15.41%。此外,11个跨物种数据集的结果表明,LNCRNA_MDEEP是预测LNCRNA的强大预测因子。

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