Statistical potentials for RNA-protein interactions optimized by CMA-ES

Characterizing RNA-protein interactions remains an important endeavor, complicated by the difficulty in obtaining the relevant structures. Evaluating model structures via statistical potentials is in principle straight-forward and effective. However, given the relatively small size of the existing l...

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Veröffentlicht in:Journal of molecular graphics & modelling 2022-01, Vol.110, p.108044-108044, Article 108044
Hauptverfasser: Kimura, Takayuki, Yasuo, Nobuaki, Sekijima, Masakazu, Lustig, Brooke
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Sprache:eng
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Zusammenfassung:Characterizing RNA-protein interactions remains an important endeavor, complicated by the difficulty in obtaining the relevant structures. Evaluating model structures via statistical potentials is in principle straight-forward and effective. However, given the relatively small size of the existing learning set of RNA-protein complexes optimization of such potentials continues to be problematic. Notably, interaction-based statistical potentials have problems in addressing large RNA-protein complexes. In this study, we adopted a novel strategy with covariance matrix adaptation (CMA-ES) to calculate statistical potentials, successfully identifying native docking poses. [Display omitted] •Estimated statistical potential via a numerical optimization algorithm.•Introduced new measurement for structures in terms of docking.•Evaluated statistical potential of π-stacking interactions and hydrogen bonds at the same time.
ISSN:1093-3263
1873-4243
DOI:10.1016/j.jmgm.2021.108044