Applying deep reinforcement learning to the HP model for protein structure prediction

Research output: Journal Publications and Reviews (RGC: 21, 22, 62)21_Publication in refereed journalpeer-review

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Author(s)

  • Kaiyuan Yang
  • Houjing Huang
  • Olafs Vandans
  • Adithya Murali
  • Roland H.C. Yap

Related Research Unit(s)

Detail(s)

Original languageEnglish
Article number128395
Journal / PublicationPhysica A: Statistical Mechanics and its Applications
Volume609
Online published7 Dec 2022
Publication statusPublished - 1 Jan 2023

Abstract

A central problem in computational biophysics is protein structure prediction, i.e., finding the optimal folding of a given amino acid sequence. This problem has been studied in a classical abstract model, the HP model, where the protein is modeled as a sequence of H (hydrophobic) and P (polar) amino acids on a lattice. The objective is to find conformations maximizing H–H contacts. It is known that even in this reduced setting, the problem is intractable (NP-hard). In this work, we apply deep reinforcement learning (DRL) to the two-dimensional HP model. We can obtain the conformations of best known energies for benchmark HP sequences with lengths from 20 to 50. Our DRL is based on a deep Q-network (DQN). We find that a DQN based on long short-term memory (LSTM) architecture greatly enhances the RL learning ability and significantly improves the search process. DRL can sample the state space efficiently, without the need of manual heuristics. Experimentally we show that it can find multiple distinct best-known solutions per trial. This study demonstrates the effectiveness of deep reinforcement learning in the HP model for protein folding.

Research Area(s)

  • Deep Q-network, HP model, LSTM, Protein structure, Reinforcement learning, Self-avoiding walks

Citation Format(s)

Applying deep reinforcement learning to the HP model for protein structure prediction. / Yang, Kaiyuan; Huang, Houjing; Vandans, Olafs et al.

In: Physica A: Statistical Mechanics and its Applications, Vol. 609, 128395, 01.01.2023.

Research output: Journal Publications and Reviews (RGC: 21, 22, 62)21_Publication in refereed journalpeer-review