2022
DOI: 10.1101/2022.04.17.488609
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A deep reinforcement learning approach to reconstructing quaternary structures of protein dimers through self-learning

Abstract: Predicted interchain residue-residue contacts can be used to build the quaternary structure of protein complexes from scratch. However, only a small number of methods have been developed to reconstruct protein quaternary structures using predicted interchain contacts. Here, we present an agent-based self-learning method based on deep reinforcement learning (DRLComplex) to build protein complex structures using interchain contacts as distance constraints. We rigorously tested the DRLComplex on two standard data… Show more

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