Equivariant Scalar Fields for Molecular Docking with Fast Fourier Transforms.

ArXiv Pub Date : 2024-09-01
Bowen Jing, Tommi Jaakkola, Bonnie Berger
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引用次数: 0

Abstract

Molecular docking is critical to structure-based virtual screening, yet the throughput of such workflows is limited by the expensive optimization of scoring functions involved in most docking algorithms. We explore how machine learning can accelerate this process by learning a scoring function with a functional form that allows for more rapid optimization. Specifically, we define the scoring function to be the cross-correlation of multi-channel ligand and protein scalar fields parameterized by equivariant graph neural networks, enabling rapid optimization over rigid-body degrees of freedom with fast Fourier transforms. The runtime of our approach can be amortized at several levels of abstraction, and is particularly favorable for virtual screening settings with a common binding pocket. We benchmark our scoring functions on two simplified docking-related tasks: decoy pose scoring and rigid conformer docking. Our method attains similar but faster performance on crystal structures compared to the widely-used Vina and Gnina scoring functions, and is more robust on computationally predicted structures. Code is available at https://github.com/bjing2016/scalar-fields.

利用快速傅立叶变换实现分子对接的等变标量场
分子对接对于基于结构的虚拟筛选至关重要,但由于大多数对接算法都需要对评分函数进行昂贵的优化,因此限制了此类工作流程的吞吐量。我们探讨了机器学习如何通过学习具有更快速优化功能形式的评分函数来加速这一过程。具体来说,我们将评分函数定义为由等变图神经网络参数化的多通道配体和蛋白质标量场的交叉相关性,从而通过快速傅立叶变换对刚体自由度进行快速优化。我们方法的运行时间可在多个抽象层级上摊销,尤其适用于具有共同结合口袋的虚拟筛选设置。我们在两个简化的对接相关任务上对我们的评分函数进行了基准测试:诱饵姿势评分和刚性构象对接。与广泛使用的 Vina 和 Gnina 评分函数相比,我们的方法在晶体结构上取得了相似但更快的性能,而且在计算预测结构上更加稳健。代码见 https://github.com/bjing2016/scalar-fields。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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