Abstract

Background1-methyladenosine (m1A) is a variant of methyladenosine that holds a methyl substituent in the 1st position having a prominent role in RNA stability and human metabolites.ObjectiveTraditional approaches, such as mass spectrometry and site-directed mutagenesis, proved to be time-consuming and complicated.MethodologyThe present research focused on the identification of m1A sites within RNA sequences using novel feature development mechanisms. The obtained features were used to train the ensemble models, including blending, boosting, and bagging. Independent testing and k-fold cross validation were then performed on the trained ensemble models.ResultsThe proposed model outperformed the preexisting predictors and revealed optimized scores based on major accuracy metrics.ConclusionFor research purpose, a user-friendly webserver of the proposed model can be accessed through https://taseersuleman-m1a-ensem1.streamlit.app/.

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