Litcius/Paper detail

Concepts and methods for transcriptome-wide prediction of chemical messenger RNA modifications with machine learning

Pablo Acera Mateos, You Zhou, Kathi Zarnack, Eduardo Eyras

2023Briefings in Bioinformatics25 citationsDOIOpen Access PDF

Abstract

The expanding field of epitranscriptomics might rival the epigenome in the diversity of biological processes impacted. In recent years, the development of new high-throughput experimental and computational techniques has been a key driving force in discovering the properties of RNA modifications. Machine learning applications, such as for classification, clustering or de novo identification, have been critical in these advances. Nonetheless, various challenges remain before the full potential of machine learning for epitranscriptomics can be leveraged. In this review, we provide a comprehensive survey of machine learning methods to detect RNA modifications using diverse input data sources. We describe strategies to train and test machine learning methods and to encode and interpret features that are relevant for epitranscriptomics. Finally, we identify some of the current challenges and open questions about RNA modification analysis, including the ambiguity in predicting RNA modifications in transcript isoforms or in single nucleotides, or the lack of complete ground truth sets to test RNA modifications. We believe this review will inspire and benefit the rapidly developing field of epitranscriptomics in addressing the current limitations through the effective use of machine learning.

Topics & Concepts

Computer scienceMachine learningArtificial intelligenceIdentification (biology)Field (mathematics)AmbiguityCluster analysisENCODEEpigenomeKey (lock)Computational biologyData scienceBiologyGeneGene expressionPure mathematicsProgramming languageBotanyDNA methylationComputer securityBiochemistryMathematicsRNA modifications and cancerCancer-related molecular mechanisms researchRNA and protein synthesis mechanisms