基于结构意识的多模态分子表示学习

Rong Yin;Ruyue Liu;Xiaoshuai Hao;Xingrui Zhou;Yong Liu;Can Ma;Weiping Wang
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引用次数: 0

摘要

分子表征的准确提取是药物发现过程中的关键一步。近年来,分子表示学习方法取得了重大进展,其中基于图像的多模态分子表示方法、二维/三维拓扑等方法日益成为主流。然而,现有的这些多模态方法往往直接融合来自不同模态的信息,忽视了多模态相互作用的潜力,未能充分捕捉分子之间复杂的高阶关系和不变特征。为了克服这些挑战,我们提出了一种基于结构意识的多模态自监督分子表示预训练框架(MMSA),旨在通过利用分子之间的不变知识来增强分子图表示。该框架由两个主要模块组成:多模态分子表示学习模块和结构感知模块。多模态分子表示学习模块协同处理来自同一分子不同模态的信息,克服多模态差异,生成统一的分子嵌入。随后,结构感知模块通过构建超图结构来模拟分子之间的高阶相关性,从而增强分子表征。该模块还引入了一种存储典型分子表征的记忆机制,将典型分子表征与记忆库中的记忆锚点对齐,整合不变知识,从而提高模型的泛化能力。与现有的多模态方法相比,MMSA可以与任何基于图形的方法无缝集成,并支持多种分子数据模式,确保了通用性和兼容性。大量的实验证明了MMSA的有效性,它在MoleculeNet基准测试中达到了最先进的性能,平均ROC-AUC比基线方法提高了1.8%至9.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Modal Molecular Representation Learning via Structure Awareness
Accurate extraction of molecular representations is a critical step in the drug discovery process. In recent years, significant progress has been made in molecular representation learning methods, among which multi-modal molecular representation methods based on images, and 2D/3D topologies have become increasingly mainstream. However, existing these multi-modal approaches often directly fuse information from different modalities, overlooking the potential of intermodal interactions and failing to adequately capture the complex higher-order relationships and invariant features between molecules. To overcome these challenges, we propose a structure-awareness-based multi-modal self-supervised molecular representation pre-training framework (MMSA) designed to enhance molecular graph representations by leveraging invariant knowledge between molecules. The framework consists of two main modules: the multi-modal molecular representation learning module and the structure-awareness module. The multi-modal molecular representation learning module collaboratively processes information from different modalities of the same molecule to overcome intermodal differences and generate a unified molecular embedding. Subsequently, the structure-awareness module enhances the molecular representation by constructing a hypergraph structure to model higher-order correlations between molecules. This module also introduces a memory mechanism for storing typical molecular representations, aligning them with memory anchors in the memory bank to integrate invariant knowledge, thereby improving the model’s generalization ability. Compared to existing multi-modal approaches, MMSA can be seamlessly integrated with any graph-based method and supports multiple molecular data modalities, ensuring both versatility and compatibility. Extensive experiments have demonstrated the effectiveness of MMSA, which achieves state-of-the-art performance on the MoleculeNet benchmark, with average ROC-AUC improvements ranging from 1.8% to 9.6% over baseline methods.
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