ComplexQA: a deep graph learning approach for protein complex structure assessment

Brief Bioinform. 2023 Sep 22;24(6):bbad287. doi: 10.1093/bib/bbad287.

Abstract

Motivation: In recent years, the end-to-end deep learning method for single-chain protein structure prediction has achieved high accuracy. For example, the state-of-the-art method AlphaFold, developed by Google, has largely increased the accuracy of protein structure predictions to near experimental accuracy in some of the cases. At the same time, there are few methods that can evaluate the quality of protein complexes at the residue level. In particular, evaluating the quality of residues at the interface of protein complexes can lead to a wide range of applications, such as protein function analysis and drug design. In this paper, we introduce a new deep graph neural network-based method ComplexQA, to evaluate the local quality of interfaces for protein complexes by utilizing the residue-level structural information in 3D space and the sequence-level constraints.

Results: We benchmark our method to other state-of-the-art quality assessment approaches on the HAF2 and DBM55-AF2 datasets (high-quality structural models predicted by AlphaFold-Multimer), and the BM5 docking dataset. The experimental results show that our proposed method achieves better or similar performance compared with other state-of-the-art methods, especially on difficult targets which only contain a few acceptable models. Our method is able to suggest a score for each interfac e residue, which demonstrates a powerful assessment tool for the ever-increasing number of protein complexes.

Availability: https://github.com/Cao-Labs/ComplexQA.git. Contact: caora@plu.edu.

Keywords: deep graph learning; machine learning; protein complex assessment; protein interface.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Neural Networks, Computer*
  • Proteins* / chemistry

Substances

  • Proteins