An approach combining deep learning and molecule docking for drug discovery of cathepsin L
收藏Taylor & Francis Group2024-02-12 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/An_approach_combining_deep_learning_and_molecule_docking_for_drug_discovery_of_cathepsin_L/22188034/1
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资源简介:
Cathepsin L (CTSL) is a promising therapeutic target for metabolic disorders and COVID-19. However, there are still no clinically available CTSL inhibitors. Our objective is to develop an approach for the discovery of potential reversible covalent CTSL inhibitors. The authors combined Chemprop, a deep learning-based strategy, and the Schrödinger CovDock algorithm to identify potential CTSL inhibitors. First, they used Chemprop to train a deep learning model capable of predicting whether a molecule would inhibit the activity of CTSL and performed predictions on ZINC20 in-stock librarie (~9.2 million molecules). Then, they selected the top-200 predicted molecules and performed the Schrödinger covalent docking algorithm to explore the binding patterns to CTSL (PDB: 5MQY). The authors then calculated the binding energies using Prime MM/GBSA and examined the stability between the best two molecules and CTSL using 100ns molecular dynamics simulations. The authors found five molecules that showed better docking results than the well-known cathepsin inhibitor odanacatib. Notably, two of these molecules, ZINC-35287427 and ZINC-1857528743, showed better docking results with CTSL compared to other cathepsins. Our approach enables drug discovery from large-scale databases with little computational consumption, which will save the cost and time required for drug discovery.
提供机构:
Li, Qi; Yang, Wei-Li; Wang, Hao; Yang, Jin-Kui
创建时间:
2023-02-28



