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A systematic review of computational methods for predicting long noncoding RNAs

Xinran Xu, Shuai Liu, Zhihao Yang, Xiaohan Zhao, Yaozhen Deng, Guangzhan Zhang, Jian Pang, Chengshuai Zhao, Wen Zhang

2021Briefings in Functional Genomics38 citationsDOI

Abstract

Accurately and rapidly distinguishing long noncoding RNAs (lncRNAs) from transcripts is prerequisite for exploring their biological functions. In recent years, many computational methods have been developed to predict lncRNAs from transcripts, but there is no systematic review on these computational methods. In this review, we introduce databases and features involved in the development of computational prediction models, and subsequently summarize existing state-of-the-art computational methods, including methods based on binary classifiers, deep learning and ensemble learning. However, a user-friendly way of employing existing state-of-the-art computational methods is in demand. Therefore, we develop a Python package ezLncPred, which provides a pragmatic command line implementation to utilize nine state-of-the-art lncRNA prediction methods. Finally, we discuss challenges of lncRNA prediction and future directions.

Topics & Concepts

Python (programming language)Computer scienceComputational modelMachine learningArtificial intelligenceComputational genomicsComputational complexity theoryComputational biologyBiologyAlgorithmGenomicsProgramming languageGeneticsGeneGenomeCancer-related molecular mechanisms researchGenomics and Phylogenetic StudiesRNA modifications and cancer
A systematic review of computational methods for predicting long noncoding RNAs | Litcius