Yingze Wang, Kunyang Sun, Jie Li, Xingyi Guan, Oufan Zhang, Dorian Bagni, Yang Zhang, Heather A Carlson, Teresa Head-Gordon
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引用次数: 0
摘要
开发用于预测蛋白质配体结合能的评分函数(SFs)需要高质量的三维结构和结合试验数据来训练和测试其参数。在这项工作中,我们发现广泛使用的数据集之一--PDBbind--存在蛋白质和配体的几种常见结构假象,这可能会影响所得 SF 的准确性、可靠性和通用性。因此,我们开发了一系列算法,并将其组织在一个半自动化的工作流程 HiQBind-WF 中,用于整理非共价蛋白质配体数据集,以解决这些问题。我们还利用这一工作流程创建了一个独立的数据集 HiQBind,方法是将来自 BioLiP、Binding MOAD 和 Binding DB 等不同来源的结合自由能与来自 PDB 的配体-蛋白质共晶体复合物进行匹配。由此产生的 HiQBind 工作流程和数据集旨在确保可重复性并最大限度地减少人为干预,同时也是开源的,以促进生物学和药物发现界对这一重要资源的透明化改进。
A workflow to create a high-quality protein-ligand binding dataset for training, validation, and prediction tasks.
Development of scoring functions (SFs) used to predict protein-ligand binding energies requires high-quality 3D structures and binding assay data for training and testing their parameters. In this work, we show that one of the widely-used datasets, PDBbind, suffers from several common structural artifacts of both proteins and ligands, which may compromise the accuracy, reliability, and generalizability of the resulting SFs. Therefore, we have developed a series of algorithms organized in a semi-automated workflow, HiQBind-WF, that curates non-covalent protein-ligand datasets to fix these problems. We also used this workflow to create an independent data set, HiQBind, by matching binding free energies from various sources including BioLiP, Binding MOAD and Binding DB with co-crystalized ligand-protein complexes from the PDB. The resulting HiQBind workflow and dataset are designed to ensure reproducibility and to minimize human intervention, while also being open-source to foster transparency in the improvements made to this important resource for the biology and drug discovery communities.