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lncDML: Identification of long non-coding RNAs by Deep Metric Learning

机译:lncDML:通过深度度量学习识别长的非编码RNA

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The next-generation sequencing technologies provide a great deal of transcripts for bioinformatics research. Specially, because of the regulation of long non-coding RNAs (lncRNAs) in various cellular processes, the research on IncRNAs is in full swing. And the solution of IncRNAs identification is the basis for the in-depth study of its functions. In this study, we present an approach to identify the IncRNAs from large scale transcripts, named IncDML which is completely different from previous identification methods. In our model, we extract signal to noise ratio (SNR) and k-mer from transcripts sequences as features. Firstly, we just use the SNR to cluster the original dataset to three parts. In this process, we achieve preliminary identification effect to some extent. Then abandoning traditional feature selection, we directly measure the relationship between each pair of samples by deep metric learning for each part of data. Finally, a novel classifier based on complex network is applied to achieve the final identification. The experiment results show that IncDML is a very effective method for identifying IncRNAs.
机译:下一代测序技术为生物信息学研究提供了大量的转录本。特别地,由于长的非编码RNA(lncRNA)在各种细胞过程中的调控,因此对IncRNA的研究如火如荼。而IncRNAs鉴定解决方案是对其功能进行深入研究的基础。在这项研究中,我们提出了一种从大规模转录本中鉴定IncRNA的方法,名为IncDML,与以前的鉴定方法完全不同。在我们的模型中,我们从成绩单序列中提取信噪比(SNR)和k-mer作为特征。首先,我们仅使用SNR将原始数据集聚为三部分。在这个过程中,我们在一定程度上达到了初步的识别效果。然后放弃传统的特征选择,我们通过对数据的每个部分进行深度度量学习来直接测量每对样本之间的关系。最后,基于复杂网络的新型分类器被应用于最终识别。实验结果表明,IncDML是一种非常有效的鉴定IncRNA的方法。

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