DRLComplex: Reconstruction of protein quaternary structures using deep reinforcement learning
Elham Soltanikazemi, Raj S. Roy, Farhan Quadir, Nabin Giri, Alex, Morehead, Jianlin Cheng

TL;DR
DRLComplex is a deep reinforcement learning method that reconstructs protein quaternary structures from inter-chain contacts, achieving high accuracy with true contacts and competitive results with predicted contacts, outperforming some existing optimization techniques.
Contribution
This paper introduces DRLComplex, a novel agent-based deep reinforcement learning approach for reconstructing protein complex structures from inter-chain contact data.
Findings
High accuracy with true contacts (TM-score ~0.99)
Competitive results with predicted contacts (TM-score ~0.75)
Outperforms some existing optimization methods
Abstract
Predicted inter-chain 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 inter-chain contacts. Here, we present an agent-based self-learning method based on deep reinforcement learning (DRLComplex) to build protein complex structures using inter-chain contacts as distance constraints. We rigorously tested DRLComplex on two standard datasets of homodimeric and heterodimeric protein complexes (i.e., the CASP-CAPRI homodimer and Std_32 heterodimer datasets) using both true and predicted interchain contacts as inputs. Utilizing true contacts as input, DRLComplex achieved high average TM-scores of 0.9895 and 0.9881 and a low average interface RMSD (I_RMSD) of 0.2197 and 0.92 on the two datasets, respectively. When…
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Taxonomy
TopicsProtein Structure and Dynamics · Software Engineering Research · Force Microscopy Techniques and Applications
MethodsSelf-Learning
