Fully differentiable coarse-grained and all-atom knowledge-based potentials for RNA structure evaluation |
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Authors: | Bernauer Julie Huang Xuhui Sim Adelene Y L Levitt Michael |
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Affiliation: | 1INRIA AMIB Bioinformatique, Laboratoire d''Informatique (LIX), École Polytechnique, 91128 Palaiseau, France;2Department of Chemistry, Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong;3Department of Applied Physics, Stanford University, Stanford, California 94305-4090, USA;4Department of Structural Biology, Stanford University, Stanford, California 94305-5126, USA |
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Abstract: | RNA molecules play integral roles in gene regulation, and understanding their structures gives us important insights into their biological functions. Despite recent developments in template-based and parameterized energy functions, the structure of RNA--in particular the nonhelical regions--is still difficult to predict. Knowledge-based potentials have proven efficient in protein structure prediction. In this work, we describe two differentiable knowledge-based potentials derived from a curated data set of RNA structures, with all-atom or coarse-grained representation, respectively. We focus on one aspect of the prediction problem: the identification of native-like RNA conformations from a set of near-native models. Using a variety of near-native RNA models generated from three independent methods, we show that our potential is able to distinguish the native structure and identify native-like conformations, even at the coarse-grained level. The all-atom version of our knowledge-based potential performs better and appears to be more effective at discriminating near-native RNA conformations than one of the most highly regarded parameterized potential. The fully differentiable form of our potentials will additionally likely be useful for structure refinement and/or molecular dynamics simulations. |
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Keywords: | RNA structure knowledge-based potential scoring |
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