从分子结构和静电学预测嗅觉感知的深度位置编码模型。

IF 3.5 2区 生物学 Q1 MATHEMATICAL & COMPUTATIONAL BIOLOGY NPJ Systems Biology and Applications Pub Date : 2024-07-17 DOI:10.1038/s41540-024-00401-0
Mengji Zhang, Yusuke Hiki, Akira Funahashi, Tetsuya J Kobayashi
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引用次数: 0

摘要

由于气味感知空间的复杂性和潜在不连续性,预测气味分子的嗅觉感知具有挑战性。在本研究中,我们介绍了一种深度学习模型 Mol-PECO(库仑矩阵位置编码的分子表征),旨在根据分子结构和静电来预测嗅觉感知。Mol-PECO 利用编码原子坐标和电荷的库仑矩阵来替代邻接矩阵及其拉普拉斯特征函数作为原子的位置编码,从而学习分子的有效嵌入。通过气味分子和描述符的综合数据集,Mol-PECO 的表现优于使用分子指纹和基于邻接矩阵的图神经网络的传统机器学习方法。Mol-PECO 学习到的嵌入有效地捕捉了气味空间,实现了描述符的全局聚类和相似气味的局部检索。这项工作有助于加深对嗅觉及其机制的理解。
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A deep position-encoding model for predicting olfactory perception from molecular structures and electrostatics.

Predicting 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.

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来源期刊
NPJ Systems Biology and Applications
NPJ Systems Biology and Applications Mathematics-Applied Mathematics
CiteScore
5.80
自引率
0.00%
发文量
46
审稿时长
8 weeks
期刊介绍: npj Systems Biology and Applications is an online Open Access journal dedicated to publishing the premier research that takes a systems-oriented approach. The journal aims to provide a forum for the presentation of articles that help define this nascent field, as well as those that apply the advances to wider fields. We encourage studies that integrate, or aid the integration of, data, analyses and insight from molecules to organisms and broader systems. Important areas of interest include not only fundamental biological systems and drug discovery, but also applications to health, medical practice and implementation, big data, biotechnology, food science, human behaviour, broader biological systems and industrial applications of systems biology. We encourage all approaches, including network biology, application of control theory to biological systems, computational modelling and analysis, comprehensive and/or high-content measurements, theoretical, analytical and computational studies of system-level properties of biological systems and computational/software/data platforms enabling such studies.
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