What is the best reference state for building statistical potentials in RNA 3D structure evaluation?

RNA

Center for Theoretical Physics and Key Laboratory of Artificial Micro and Nano-structures of Ministry of Education, School of Physics and Technology, Wuhan University, Wuhan 430072, China.

Published: July 2019

AI Article Synopsis

  • Knowledge-based statistical potentials are effective for evaluating and predicting protein structures, but there is a lack of comprehensive research on reference states specifically for RNA structure evaluation.
  • This study created six statistical potentials using different reference states from protein analysis and tested them on three RNA datasets, finding that the finite-ideal-gas and random-walk-chain methods performed best overall.
  • The results indicate that the effectiveness of these potentials is influenced by both the quality of the training sets used and the specific origins of the RNA test sets, with generally poor performance observed for realistic RNA test subsets.

Article Abstract

Knowledge-based statistical potentials have been shown to be efficient in protein structure evaluation/prediction, and the core difference between various statistical potentials is attributed to the choice of reference states. However, for RNA 3D structure evaluation, a comprehensive examination on reference states is still lacking. In this work, we built six statistical potentials based on six reference states widely used in protein structure evaluation, including averaging, quasi-chemical approximation, atom-shuffled, finite-ideal-gas, spherical-noninteracting, and random-walk-chain reference states, and we examined the six reference states against three RNA test sets including six subsets. Our extensive examinations show that, overall, for identifying native structures and ranking decoy structures, the finite-ideal-gas and random-walk-chain reference states are slightly superior to others, while for identifying near-native structures, there is only a slight difference between these reference states. Our further analyses show that the performance of a statistical potential is apparently dependent on the quality of the training set. Furthermore, we found that the performance of a statistical potential is closely related to the origin of test sets, and for the three realistic test subsets, the six statistical potentials have overall unsatisfactory performance. This work presents a comprehensive examination on the existing reference states and statistical potentials for RNA 3D structure evaluation.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6573789PMC
http://dx.doi.org/10.1261/rna.069872.118DOI Listing

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