Multimodal Protein Representation Learning and Target-aware Variational Auto-encoders for Protein-binding Ligand Generation

Nhat-Khang Ngô, T. Hy
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引用次数: 1

Abstract

Without knowledge of specific pockets, generating ligands based on the global structure of a protein target plays a crucial role in drug discovery as it helps reduce the search space for potential drug-like candidates in the pipeline. However, contemporary methods require optimizing tailored networks for each protein, which is arduous and costly. To address this issue, we introduce TargetVAE, a target-aware variational auto-encoder that generates ligands with desirable properties including high binding affinity and high synthesizability to arbitrary target proteins, guided by a multimodal deep neural network built based on geometric and sequence models, named Protein Multimodal Network (PMN), as the prior for the generative model. PMN unifies different representations of proteins (e.g., primary structure - sequence of amino acids, 3D tertiary structure, and residue-level graph) into a single representation. Our multimodal architecture learns from the entire protein structure and is able to capture their sequential, topological, and geometrical information by utilizing language modeling, graph neural networks, and geometric deep learning. We showcase the superiority of our approach by conducting extensive experiments and evaluations, including predicting protein-ligand binding affinity in the PBDBind v2020 dataset as well as the assessment of generative model quality, ligand generation for unseen targets, and docking score computation. Empirical results demonstrate the promising and competitive performance of our proposed approach. Our software package is publicly available at https://github.com/HySonLab/Ligand_Generation
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用于蛋白质结合配体生成的多模态蛋白质表征学习和目标感知变异自动编码器
在不了解特定口袋的情况下,根据蛋白质靶点的整体结构生成配体在药物发现中起着至关重要的作用,因为这有助于缩小潜在药物候选者的搜索空间。然而,现代方法需要为每种蛋白质优化定制网络,这既艰巨又昂贵。为了解决这个问题,我们引入了 TargetVAE,这是一种目标感知变异自动编码器,它能生成具有理想特性的配体,包括与任意目标蛋白质的高结合亲和力和高合成性,并以基于几何和序列模型构建的多模态深度神经网络(名为蛋白质多模态网络(PMN))作为生成模型的先验。PMN 将蛋白质的不同表征(如一级结构--氨基酸序列、三维三级结构和残基级图形)统一为单一表征。我们的多模态架构从整个蛋白质结构中学习,通过利用语言建模、图神经网络和几何深度学习,能够捕捉其序列、拓扑和几何信息。我们通过广泛的实验和评估展示了我们方法的优越性,包括在 PBDBind v2020 数据集中预测蛋白质与配体的结合亲和力,以及评估生成模型的质量、为未见靶标生成配体和计算对接得分。实证结果表明,我们提出的方法具有良好的前景和竞争力。我们的软件包可通过 https://github.com/HySonLab/Ligand_Generation 公开获取。
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