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MOL-Mamba: Enhancing Molecular Representation with Structural & Electronic Insights

MOL-Mamba: Enhancing Molecular Representation with Structural & Electronic Insights

来源:Arxiv_logoArxiv
英文摘要

Molecular representation learning plays a crucial role in various downstream tasks, such as molecular property prediction and drug design. To accurately represent molecules, Graph Neural Networks (GNNs) and Graph Transformers (GTs) have shown potential in the realm of self-supervised pretraining. However, existing approaches often overlook the relationship between molecular structure and electronic information, as well as the internal semantic reasoning within molecules. This omission of fundamental chemical knowledge in graph semantics leads to incomplete molecular representations, missing the integration of structural and electronic data. To address these issues, we introduce MOL-Mamba, a framework that enhances molecular representation by combining structural and electronic insights. MOL-Mamba consists of an Atom & Fragment Mamba-Graph (MG) for hierarchical structural reasoning and a Mamba-Transformer (MT) fuser for integrating molecular structure and electronic correlation learning. Additionally, we propose a Structural Distribution Collaborative Training and E-semantic Fusion Training framework to further enhance molecular representation learning. Extensive experiments demonstrate that MOL-Mamba outperforms state-of-the-art baselines across eleven chemical-biological molecular datasets.

Dan Guo、Deguang Liu、Jing Zhang、Jingjing Hu、Yunfeng Diao、Meng Wang、Jinxing Zhou、Zhan Si

分子生物学生物化学生物物理学

Dan Guo,Deguang Liu,Jing Zhang,Jingjing Hu,Yunfeng Diao,Meng Wang,Jinxing Zhou,Zhan Si.MOL-Mamba: Enhancing Molecular Representation with Structural & Electronic Insights[EB/OL].(2024-12-20)[2025-05-23].https://arxiv.org/abs/2412.16483.点此复制

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