A deep position-encoding model for predicting olfactory perception from molecular structures and electrostatics

Author:

Zhang Mengji,Hiki YusukeORCID,Funahashi AkiraORCID,Kobayashi Tetsuya J.ORCID

Abstract

AbstractPredicting olfactory perceptions from odorant molecules is challenging due to the complex and potentially discontinuous nature of the perceptual space for smells. In this study, we introduce a deep learning model, Mol-PECO (Molecular Representation by Positional Encoding of Coulomb Matrix), designed to predict olfactory perceptions based on molecular structures and electrostatics. Mol-PECO learns the efficient embedding of molecules by utilizing the Coulomb matrix, which encodes atomic coordinates and charges, as an alternative of the adjacency matrix and its Laplacian eigenfunctions as positional encoding of atoms. With a comprehensive dataset of odor molecules and descriptors, Mol-PECO outperforms traditional machine learning methods using molecular fingerprints and graph neural networks based on adjacency matrices. The learned embeddings by Mol-PECO effectively capture the odor space, enabling global clustering of descriptors and local retrieval of similar odorants. This work contributes to a deeper understanding of the olfactory sense and its mechanisms.

Funder

MEXT | Japan Society for the Promotion of Science

MEXT | Japan Science and Technology Agency

China Scholarship Council

Publisher

Springer Science and Business Media LLC

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