Author
Listed:
- Guangfeng Zhou
(University of Washington
University of Washington)
- Domnita-Valeria Rusnac
(University of Washington)
- Hahnbeom Park
(Korea Institute of Science and Technology
SKKU Institute for Convergence, Sungkyunkwan University)
- Daniele Canzani
(University of Washington)
- Hai Minh Nguyen
(University of California Davis)
- Lance Stewart
(University of Washington)
- Matthew F. Bush
(University of Washington)
- Phuong Tran Nguyen
(University of California Davis)
- Heike Wulff
(University of California Davis)
- Vladimir Yarov-Yarovoy
(University of California Davis
University of California Davis)
- Ning Zheng
(University of Washington)
- Frank DiMaio
(University of Washington
University of Washington)
Abstract
Structure-based virtual screening is a key tool in early drug discovery, with growing interest in the screening of multi-billion chemical compound libraries. However, the success of virtual screening crucially depends on the accuracy of the binding pose and binding affinity predicted by computational docking. Here we develop a highly accurate structure-based virtual screen method, RosettaVS, for predicting docking poses and binding affinities. Our approach outperforms other state-of-the-art methods on a wide range of benchmarks, partially due to our ability to model receptor flexibility. We incorporate this into a new open-source artificial intelligence accelerated virtual screening platform for drug discovery. Using this platform, we screen multi-billion compound libraries against two unrelated targets, a ubiquitin ligase target KLHDC2 and the human voltage-gated sodium channel NaV1.7. For both targets, we discover hit compounds, including seven hits (14% hit rate) to KLHDC2 and four hits (44% hit rate) to NaV1.7, all with single digit micromolar binding affinities. Screening in both cases is completed in less than seven days. Finally, a high resolution X-ray crystallographic structure validates the predicted docking pose for the KLHDC2 ligand complex, demonstrating the effectiveness of our method in lead discovery.
Suggested Citation
Guangfeng Zhou & Domnita-Valeria Rusnac & Hahnbeom Park & Daniele Canzani & Hai Minh Nguyen & Lance Stewart & Matthew F. Bush & Phuong Tran Nguyen & Heike Wulff & Vladimir Yarov-Yarovoy & Ning Zheng &, 2024.
"An artificial intelligence accelerated virtual screening platform for drug discovery,"
Nature Communications, Nature, vol. 15(1), pages 1-14, December.
Handle:
RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-52061-7
DOI: 10.1038/s41467-024-52061-7
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