Litcius/Paper detail

Improved prediction of DNA and RNA binding proteins with deep learning models

Siwen Wu, Jun‐tao Guo

2024Briefings in Bioinformatics14 citationsDOIOpen Access PDF

Abstract

Nucleic acid-binding proteins (NABPs), including DNA-binding proteins (DBPs) and RNA-binding proteins (RBPs), play important roles in essential biological processes. To facilitate functional annotation and accurate prediction of different types of NABPs, many machine learning-based computational approaches have been developed. However, the datasets used for training and testing as well as the prediction scopes in these studies have limited their applications. In this paper, we developed new strategies to overcome these limitations by generating more accurate and robust datasets and developing deep learning-based methods including both hierarchical and multi-class approaches to predict the types of NABPs for any given protein. The deep learning models employ two layers of convolutional neural network and one layer of long short-term memory. Our approaches outperform existing DBP and RBP predictors with a balanced prediction between DBPs and RBPs, and are more practically useful in identifying novel NABPs. The multi-class approach greatly improves the prediction accuracy of DBPs and RBPs, especially for the DBPs with ~12% improvement. Moreover, we explored the prediction accuracy of single-stranded DNA binding proteins and their effect on the overall prediction accuracy of NABP predictions.

Topics & Concepts

Computer scienceArtificial intelligenceDeep learningMachine learningConvolutional neural networkRNA-binding proteinAnnotationComputational biologyRNABiologyGeneGeneticsRNA and protein synthesis mechanismsRNA Research and SplicingRNA modifications and cancer
Improved prediction of DNA and RNA binding proteins with deep learning models | Litcius