Litcius/Paper detail

iMethyl-Deep: N6 Methyladenosine Identification of Yeast Genome with Automatic Feature Extraction Technique by Using Deep Learning Algorithm

Omid Mahmoudi, Abdul Wahab, Kil To Chong

2020Genes29 citationsDOIOpen Access PDF

Abstract

One of the most common and well studied post-transcription modifications in RNAs is N6-methyladenosine (m6A) which has been involved with a wide range of biological processes. Over the past decades, N6-methyladenosine produced some positive consequences through the high-throughput laboratory techniques but still, these lab processes are time consuming and costly. Diverse computational methods have been proposed to identify m6A sites accurately. In this paper, we proposed a computational model named iMethyl-deep to identify m6A Saccharomyces Cerevisiae on two benchmark datasets M6A2614 and M6A6540 by using single nucleotide resolution to convert RNA sequence into a high quality feature representation. The iMethyl-deep obtained 89.19% and 87.44% of accuracy on M6A2614 and M6A6540 respectively which show that our proposed method outperforms the state-of-the-art predictors, at least 8.44%, 8.96%, 8.69% and 0.173 on M6A2614 and 15.47%, 28.52%, 25.54 and 0.5 on M6A6540 higher in terms of four metrics Sp, Sn, ACC and MCC respectively. Meanwhile, M6A6540 dataset never used to train a model.

Topics & Concepts

N6-MethyladenosineBenchmark (surveying)Computer scienceDeep learningArtificial intelligenceIdentification (biology)Feature (linguistics)Feature extractionComputational biologyPattern recognition (psychology)AlgorithmMachine learningBiologyGeneGeneticsMethylationLinguisticsMethyltransferaseGeographyGeodesyPhilosophyBotanyGenomics and Phylogenetic StudiesRNA and protein synthesis mechanismsMachine Learning in Bioinformatics