One-step Structure Prediction and Screening for Protein-Ligand Complexes using Multi-Task Geometric Deep Learning

Kelei He, Tiejun Dong, Jinhui Wu, Junfeng Zhang
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Abstract

Understanding the structure of the protein-ligand complex is crucial to drug development. Existing virtual structure measurement and screening methods are dominated by docking and its derived methods combined with deep learning. However, the sampling and scoring methodology have largely restricted the accuracy and efficiency. Here, we show that these two fundamental tasks can be accurately tackled with a single model, namely LigPose, based on multi-task geometric deep learning. By representing the ligand and the protein pair as a graph, LigPose directly optimizes the three-dimensional structure of the complex, with the learning of binding strength and atomic interactions as auxiliary tasks, enabling its one-step prediction ability without docking tools. Extensive experiments show LigPose achieved state-of-the-art performance on major tasks in drug research. Its considerable improvements indicate a promising paradigm of AI-based pipeline for drug development.
利用多任务几何深度学习对蛋白质配体复合物进行一步式结构预测和筛选
了解蛋白质配体复合物的结构对药物开发至关重要。然而,采样和评分方法在很大程度上限制了其准确性和效率。在这里,我们展示了基于多任务几何深度学习的单一模型 LigPose 可以准确地解决这两项基本任务。LigPose 将配体和蛋白质配对表示为一个图,直接优化复合物的三维结构,并将结合强度和原子相互作用的学习作为辅助任务,从而实现了无需对接工具的一步预测能力。广泛的实验表明,LigPose 在药物研究的主要任务上取得了最先进的性能。LigPose在药物研究的主要任务上取得了一流的性能,其显著的改进预示着基于人工智能的药物开发管道范式正在不断完善。
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