From Static to Dynamic Structures: Improving Binding Affinity Prediction with Graph‐Based Deep Learning

Author:

Min Yaosen1ORCID,Wei Ye1,Wang Peizhuo12,Wang Xiaoting3,Li Han1,Wu Nian1,Bauer Stefan4,Zheng Shuxin5,Shi Yu5,Wang Yingheng6,Wu Ji6,Zhao Dan1,Zeng Jianyang78ORCID

Affiliation:

1. Institute for Interdisciplinary Information Sciences Tsinghua University Beijing 100084 China

2. School of Life Science and Technology Xidian University Xi'an 710071 Shaanxi China

3. School of Medicine Tsinghua University Beijing 100084 China

4. Department of Intelligent Systems KTH Stockholm 10044 Sweden

5. Microsoft Research Asia Beijing 100080 China

6. Department of Electrical Engineering Tsinghua University Beijing 100084 China

7. School of Engineering Westlake University Hangzhou 310030 China

8. Research Center for Industries of the Future Westlake University Hangzhou 310030 China

Abstract

AbstractAccurate prediction of protein‐ligand binding affinities is an essential challenge in structure‐based drug design. Despite recent advances in data‐driven methods for affinity prediction, their accuracy is still limited, partially because they only take advantage of static crystal structures while the actual binding affinities are generally determined by the thermodynamic ensembles between proteins and ligands. One effective way to approximate such a thermodynamic ensemble is to use molecular dynamics (MD) simulation. Here, an MD dataset containing 3,218 different protein‐ligand complexes is curated, and Dynaformer, a graph‐based deep learning model is further developed to predict the binding affinities by learning the geometric characteristics of the protein‐ligand interactions from the MD trajectories. In silico experiments demonstrated that the model exhibits state‐of‐the‐art scoring and ranking power on the CASF‐2016 benchmark dataset, outperforming the methods hitherto reported. Moreover, in a virtual screening on heat shock protein 90 (HSP90) using Dynaformer, 20 candidates are identified and their binding affinities are further experimentally validated. Dynaformer displayed promising results in virtual drug screening, revealing 12 hit compounds (two are in the submicromolar range), including several novel scaffolds. Overall, these results demonstrated that the approach offer a promising avenue for accelerating the early drug discovery process.

Funder

National Natural Science Foundation of China

National Key Research and Development Program of China

Publisher

Wiley

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