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Colabind:一种基于云的方法,用于使用分子探针进行粗粒度模拟预测结合位点。

Colabind: A Cloud-Based Approach for Prediction of Binding Sites Using Coarse-Grained Simulations with Molecular Probes.

机构信息

Insilico Medicine AI Ltd., Masdar City 145748, United Arab Emirates.

Division of Scientific Computing, Department of Information Technology, Uppsala University, Uppsala 752 37, Sweden.

出版信息

J Phys Chem B. 2024 Apr 4;128(13):3211-3219. doi: 10.1021/acs.jpcb.3c07853. Epub 2024 Mar 21.

DOI:10.1021/acs.jpcb.3c07853
PMID:38514440
Abstract

Binding site prediction is a crucial step in understanding protein-ligand and protein-protein interactions (PPIs) with broad implications in drug discovery and bioinformatics. This study introduces Colabind, a robust, versatile, and user-friendly cloud-based approach that employs coarse-grained molecular dynamics simulations in the presence of molecular probes, mimicking fragments of drug-like compounds. Our method has demonstrated high effectiveness when validated across a diverse range of biological targets spanning various protein classes, successfully identifying orthosteric binding sites, as well as known druggable allosteric or PPI sites, in both experimentally determined and AI-predicted protein structures, consistently placing them among the top-ranked sites. Furthermore, we suggest that careful inspection of the identified regions with a high affinity for specific probes can provide valuable insights for the development of pharmacophore hypotheses. The approach is available at https://github.com/porekhov/CG_probeMD.

摘要

结合部位预测是理解蛋白质-配体和蛋白质-蛋白质相互作用(PPIs)的关键步骤,在药物发现和生物信息学中有广泛的应用。本研究介绍了 Colabind,这是一种强大、多功能且用户友好的基于云的方法,它在分子探针存在的情况下使用粗粒度分子动力学模拟,模拟类药物化合物的片段。我们的方法在经过各种不同的生物靶标验证时表现出了很高的有效性,这些靶标跨越了各种蛋白质类别,成功地识别了正位结合部位,以及已知的可成药性别构或 PPI 部位,无论是在实验确定的还是人工智能预测的蛋白质结构中,这些部位都一直被排在前列。此外,我们还提出,仔细检查与特定探针具有高亲和力的鉴定区域,可以为药理性假设的发展提供有价值的见解。该方法可在 https://github.com/porekhov/CG_probeMD 上获得。

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引用本文的文献

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