Litcius/Paper detail

Predicting genes associated with RNA methylation pathways using machine learning

Georgia Tsagkogeorga, Helena Santos-Rosa, Andrej Alendar, Dan Leggate, Oliver Rausch, Tony Kouzarides, Hendrik Weisser, Namshik Han

2022Communications Biology11 citationsDOIOpen Access PDF

Abstract

RNA methylation plays an important role in functional regulation of RNAs, and has thus attracted an increasing interest in biology and drug discovery. Here, we collected and collated transcriptomic, proteomic, structural and physical interaction data from the Harmonizome database, and applied supervised machine learning to predict novel genes associated with RNA methylation pathways in human. We selected five types of classifiers, which we trained and evaluated using cross-validation on multiple training sets. The best models reached 88% accuracy based on cross-validation, and an average 91% accuracy on the test set. Using protein-protein interaction data, we propose six molecular sub-networks linking model predictions to previously known RNA methylation genes, with roles in mRNA methylation, tRNA processing, rRNA processing, but also protein and chromatin modifications. Our study exemplifies how access to large omics datasets joined by machine learning methods can be used to predict gene function.

Topics & Concepts

Computational biologyMethylationRNA methylationRNAGeneTranscriptomeBiologyMachine learningChromatinDNA methylationComputer scienceArtificial intelligenceGene expressionGeneticsMethyltransferaseRNA modifications and cancerCancer-related molecular mechanisms researchCancer-related gene regulation