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DeepLncPro: an interpretable convolutional neural network model for identifying long non-coding RNA promoters

Tianyang Zhang, Qiang Tang, Fulei Nie, Qi Zhao, Wei Chen

2022Briefings in Bioinformatics17 citationsDOI

Abstract

Long non-coding RNA (lncRNA) plays important roles in a series of biological processes. The transcription of lncRNA is regulated by its promoter. Hence, accurate identification of lncRNA promoter will be helpful to understand its regulatory mechanisms. Since experimental techniques remain time consuming for gnome-wide promoter identification, developing computational tools to identify promoters are necessary. However, only few computational methods have been proposed for lncRNA promoter prediction and their performances still have room to be improved. In the present work, a convolutional neural network based model, called DeepLncPro, was proposed to identify lncRNA promoters in human and mouse. Comparative results demonstrated that DeepLncPro was superior to both state-of-the-art machine learning methods and existing models for identifying lncRNA promoters. Furthermore, DeepLncPro has the ability to extract and analyze transcription factor binding motifs from lncRNAs, which made it become an interpretable model. These results indicate that the DeepLncPro can server as a powerful tool for identifying lncRNA promoters. An open-source tool for DeepLncPro was provided at https://github.com/zhangtian-yang/DeepLncPro.

Topics & Concepts

PromoterComputational biologyConvolutional neural networkComputer scienceIdentification (biology)Coding (social sciences)Transcription factorTranscription (linguistics)Artificial intelligenceBiologyMachine learningGeneGeneticsGene expressionMathematicsStatisticsBotanyLinguisticsPhilosophyCancer-related molecular mechanisms researchRNA modifications and cancerRNA and protein synthesis mechanisms
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