4.7 Article

DeepBSP-a Machine Learning Method for Accurate Prediction of Protein-Ligand Docking Structures

Journal

JOURNAL OF CHEMICAL INFORMATION AND MODELING
Volume 61, Issue 5, Pages 2231-2240

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.jcim.1c00334

Keywords

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Funding

  1. National Key R&D Program of China [2016YFA0501700, 2019YFA0905201]
  2. National Natural Science Foundation of China [21922301, 21761132022, 21673074, 91753103, 21933010]
  3. Natural Science Foundation of Shanghai Municipality [18ZR1412600]
  4. Fundamental Research Funds for the Central Universities

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The machine-learning model DeepBSP is capable of predicting the root mean square deviation (rmsd) of a ligand docking pose relative to its native binding pose. Trained on a large dataset, this model demonstrates excellent docking power and is useful in accurately selecting poses closest to their native structures.
In recent years, machine-learning-based scoring functions have significantly improved the scoring power. However, many of these methods do not perform well in distinguishing the native structure from docked decoy poses due to the lack of decoy structural information in their training data. Here, we developed a machine-learning model, named DeepBSP, that can directly predict the root mean square deviation (rmsd) of a ligand docking pose with reference to its native binding pose. Unlike the binding affinity, the rmsd between the docking poses with reference to their native structures can be straightforwardly determined. By training on a generated data set with 11,925 native complexes and more than 165,000 docked poses, our model shows excellent docking power on our test set and also on the CASF-2016 docking decoy set compared to other major scoring functions. Thus, by combining molecular dockings that generate many poses with the application of DeepBSP, one can more accurately predict the best binding pose that is closest to the native complex structure. This DeepBSP model shall be very useful in picking out poses close to their natives from many poses generated from a dock application.

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