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Main Authors: Peng, Yangzhe, Gao, Kaiyuan, He, Liang, Cong, Yuheng, Liu, Haiguang, He, Kun, Wu, Lijun
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.21085
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author Peng, Yangzhe
Gao, Kaiyuan
He, Liang
Cong, Yuheng
Liu, Haiguang
He, Kun
Wu, Lijun
author_facet Peng, Yangzhe
Gao, Kaiyuan
He, Liang
Cong, Yuheng
Liu, Haiguang
He, Kun
Wu, Lijun
contents Molecular docking plays a crucial role in predicting the binding mode of ligands to target proteins, and covalent interactions, which involve the formation of a covalent bond between the ligand and the target, are particularly valuable due to their strong, enduring binding nature. However, most existing docking methods and deep learning approaches hardly account for the formation of covalent bonds and the associated structural changes. To address this gap, we introduce a comprehensive benchmark for covalent docking, CovDocker, which is designed to better capture the complexities of covalent binding. We decompose the covalent docking process into three main tasks: reactive location prediction, covalent reaction prediction, and covalent docking. By adapting state-of-the-art models, such as Uni-Mol and Chemformer, we establish baseline performances and demonstrate the effectiveness of the benchmark in accurately predicting interaction sites and modeling the molecular transformations involved in covalent binding. These results confirm the role of the benchmark as a rigorous framework for advancing research in covalent drug design. It underscores the potential of data-driven approaches to accelerate the discovery of selective covalent inhibitors and addresses critical challenges in therapeutic development.
format Preprint
id arxiv_https___arxiv_org_abs_2506_21085
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle CovDocker: Benchmarking Covalent Drug Design with Tasks, Datasets, and Solutions
Peng, Yangzhe
Gao, Kaiyuan
He, Liang
Cong, Yuheng
Liu, Haiguang
He, Kun
Wu, Lijun
Biomolecules
Artificial Intelligence
Machine Learning
Molecular docking plays a crucial role in predicting the binding mode of ligands to target proteins, and covalent interactions, which involve the formation of a covalent bond between the ligand and the target, are particularly valuable due to their strong, enduring binding nature. However, most existing docking methods and deep learning approaches hardly account for the formation of covalent bonds and the associated structural changes. To address this gap, we introduce a comprehensive benchmark for covalent docking, CovDocker, which is designed to better capture the complexities of covalent binding. We decompose the covalent docking process into three main tasks: reactive location prediction, covalent reaction prediction, and covalent docking. By adapting state-of-the-art models, such as Uni-Mol and Chemformer, we establish baseline performances and demonstrate the effectiveness of the benchmark in accurately predicting interaction sites and modeling the molecular transformations involved in covalent binding. These results confirm the role of the benchmark as a rigorous framework for advancing research in covalent drug design. It underscores the potential of data-driven approaches to accelerate the discovery of selective covalent inhibitors and addresses critical challenges in therapeutic development.
title CovDocker: Benchmarking Covalent Drug Design with Tasks, Datasets, and Solutions
topic Biomolecules
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2506.21085