Improving the generalizability of protein-ligand binding predictions with AI-Bind

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作者
Ayan Chatterjee
Robin Walters
Zohair Shafi
Omair Shafi Ahmed
Michael Sebek
Deisy Gysi
Rose Yu
Tina Eliassi-Rad
Albert-László Barabási
Giulia Menichetti
机构
[1] Northeastern University,Network Science Institute
[2] Northeastern University,Khoury College of Computer Sciences
[3] Northeastern University,Department of Physics
[4] Brigham and Women’s Hospital,Department of Medicine
[5] Harvard Medical School,Department of Computer Science and Engineering
[6] University of California,The Institute for Experiential AI
[7] Santa Fe Institute,Department of Network and Data Science
[8] Northeastern University,Channing Division of Network Medicine, Department of Medicine
[9] Central European University,undefined
[10] Brigham and Women’s Hospital,undefined
[11] Harvard Medical School,undefined
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摘要
Identifying novel drug-target interactions is a critical and rate-limiting step in drug discovery. While deep learning models have been proposed to accelerate the identification process, here we show that state-of-the-art models fail to generalize to novel (i.e., never-before-seen) structures. We unveil the mechanisms responsible for this shortcoming, demonstrating how models rely on shortcuts that leverage the topology of the protein-ligand bipartite network, rather than learning the node features. Here we introduce AI-Bind, a pipeline that combines network-based sampling strategies with unsupervised pre-training to improve binding predictions for novel proteins and ligands. We validate AI-Bind predictions via docking simulations and comparison with recent experimental evidence, and step up the process of interpreting machine learning prediction of protein-ligand binding by identifying potential active binding sites on the amino acid sequence. AI-Bind is a high-throughput approach to identify drug-target combinations with the potential of becoming a powerful tool in drug discovery.
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