Litcius/Paper detail

De novo prediction of RNA 3D structures with deep generative models

Julius Ramakers, Christopher Blum, Sabrina König, Stefan Harmeling, Markus Kollmann

2024PLoS ONE11 citationsDOIOpen Access PDF

Abstract

We present a Deep Learning approach to predict 3D folding structures of RNAs from their nucleic acid sequence. Our approach combines an autoregressive Deep Generative Model, Monte Carlo Tree Search, and a score model to find and rank the most likely folding structures for a given RNA sequence. We show that RNA de novo structure prediction by deep learning is possible at atom resolution, despite the low number of experimentally measured structures that can be used for training. We confirm the predictive power of our approach by achieving competitive results in a retrospective evaluation of the RNA-Puzzles prediction challenges, without using structural contact information from multiple sequence alignments or additional data from chemical probing experiments. Blind predictions for recent RNA-Puzzle challenges under the name "Dfold" further support the competitive performance of our approach.

Topics & Concepts

RNADeep learningComputational biologyComputer scienceArtificial intelligenceFolding (DSP implementation)Nucleic acid secondary structureNucleic acid structureProtein structure predictionSequence (biology)Autoregressive modelRank (graph theory)Machine learningBioinformaticsBiologyProtein structureMathematicsGeneticsGeneEngineeringCombinatoricsStatisticsElectrical engineeringBiochemistryRNA and protein synthesis mechanismsRNA modifications and cancerRNA Research and Splicing