Litcius/Paper detail

cgRNASP: coarse-grained statistical potentials with residue separation for RNA structure evaluation

Ya-Lan Tan, Xunxun Wang, Shixiong Yu, Bengong Zhang, Zhi-Jie Tan

2023NAR Genomics and Bioinformatics23 citationsDOIOpen Access PDF

Abstract

Knowledge-based statistical potentials are very important for RNA 3-dimensional (3D) structure prediction and evaluation. In recent years, various coarse-grained (CG) and all-atom models have been developed for predicting RNA 3D structures, while there is still lack of reliable CG statistical potentials not only for CG structure evaluation but also for all-atom structure evaluation at high efficiency. In this work, we have developed a series of residue-separation-based CG statistical potentials at different CG levels for RNA 3D structure evaluation, namely cgRNASP, which is composed of long-ranged and short-ranged interactions by residue separation. Compared with the newly developed all-atom rsRNASP, the short-ranged interaction in cgRNASP was involved more subtly and completely. Our examinations show that, the performance of cgRNASP varies with CG levels and compared with rsRNASP, cgRNASP has similarly good performance for extensive types of test datasets and can have slightly better performance for the realistic dataset-RNA-Puzzles dataset. Furthermore, cgRNASP is strikingly more efficient than all-atom statistical potentials/scoring functions, and can be apparently superior to other all-atom statistical potentials and scoring functions trained from neural networks for the RNA-Puzzles dataset. cgRNASP is available at https://github.com/Tan-group/cgRNASP.

Topics & Concepts

RNAComputer scienceStatistical analysisAtom (system on chip)Residue (chemistry)AlgorithmNucleic acid structureBiological systemArtificial intelligenceComputational biologyStatistical physicsChemistryPhysicsMathematicsStatisticsBiologyGeneBiochemistryEmbedded systemRNA and protein synthesis mechanismsGenomics and Phylogenetic StudiesRNA modifications and cancer