Molecular Odor Prediction Based on Multi-Feature Graph Attention Networks
- URL: http://arxiv.org/abs/2502.01430v1
- Date: Mon, 03 Feb 2025 15:11:24 GMT
- Title: Molecular Odor Prediction Based on Multi-Feature Graph Attention Networks
- Authors: HongXin Xie, JianDe Sun, Yi Shao, Shuai Li, Sujuan Hou, YuLong Sun, Jian Wang,
- Abstract summary: Quantitative Structure-Odor Relationship task involves predicting associations between molecular structures and their corresponding odors.
We propose a method for QSOR, utilizing Graph Attention Networks to model molecular structures and capture both local and global features.
Our approach demonstrates clear advantages in QSOR prediction tasks, offering valuable insights into the application of deep learning in cheminformatics.
- Score: 11.912107063761939
- License:
- Abstract: Olfactory perception plays a critical role in both human and organismal interactions, yet understanding of its underlying mechanisms and influencing factors remain insufficient. Molecular structures influence odor perception through intricate biochemical interactions, and accurately quantifying structure-odor relationships presents significant challenges. The Quantitative Structure-Odor Relationship (QSOR) task, which involves predicting the associations between molecular structures and their corresponding odors, seeks to address these challenges. To this end, we propose a method for QSOR, utilizing Graph Attention Networks to model molecular structures and capture both local and global features. Unlike conventional QSOR approaches reliant on predefined descriptors, our method leverages diverse molecular feature extraction techniques to automatically learn comprehensive representations. This integration enhances the model's capacity to handle complex molecular information, improves prediction accuracy. Our approach demonstrates clear advantages in QSOR prediction tasks, offering valuable insights into the application of deep learning in cheminformatics.
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