Predicting human olfactory perception by odorant structure and receptor activation profile.

IF 2.8 4区 心理学 Q1 BEHAVIORAL SCIENCES
Yusuke Ihara, Chiori Ijichi, Yasuko Nogi, Masayuki Sugiki, Yuko Kodama, Sayoko Ihara, Mika Shirasu, Takatsugu Hirokawa, Kazushige Touhara
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引用次数: 0

Abstract

Humans possess a remarkable ability to discriminate a wide range of odors with high precision. This process begins with olfactory receptors (ORs) detecting and responding to the molecular structures of odorants. Recent studies have aimed to associate the activity of a single OR to an odor descriptor or predict odor descriptors using 2D molecular representation. However, predicting a limited number of odor descriptors is insufficient to fully understand the widespread and elaborate olfactory perception process. Therefore, we conducted structure-activity relationship analyses for ORs of eugenol, vanillin, and structurally similar compounds, investigating the correlation between molecular structures, OR activity profiles, and perceptual odor similarity. Our results indicated that these structurally similar compounds primarily activated 6 ORs, and the activity profiles of these ORs correlated with their perception. This enabled the development of a prediction model for the eugenol-similarity score from OR activity profiles (coefficient of determination, R2 = 0.687). Furthermore, the molecular structures of odorants were represented as 3D shapes and pharmacophore fingerprints, considering the 3D structural similarities between various odorants with multiple conformations. These 3D shape and pharmacophore fingerprints could also predict the perceptual odor similarity (R2 = 0.514). Finally, we identified key molecular structural features that contributed to predicting sensory similarities between compounds structurally similar to eugenol and vanillin. Our models, which predict odor from OR activity profiles and similarities in the 3D structure of odorants, may aid in understanding olfactory perception by compressing the information from a vast number of odorants into the activity profiles of 400 ORs.

通过气味结构和受体激活谱预测人类嗅觉。
人类拥有一种非凡的能力,可以高精度地辨别各种各样的气味。这个过程开始于嗅觉感受器(ORs)探测和响应气味的分子结构。最近的研究旨在将单个OR的活性与气味描述符联系起来,或者使用二维分子表示来预测气味描述符。然而,预测有限数量的气味描述符不足以充分理解广泛而复杂的嗅觉感知过程。因此,我们对丁香酚、香兰素和结构相似的化合物进行了结构-活性关系分析,研究了分子结构、OR活性谱和感知气味相似性之间的关系。我们的研究结果表明,这些结构相似的化合物主要激活了6个ORs,并且这些ORs的活性分布与其感知相关。这使得从OR活性谱中开发丁香酚相似性评分的预测模型成为可能(决定系数,R2 = 0.687)。此外,考虑到不同构象的气味剂在三维结构上的相似性,将气味剂的分子结构表示为三维形状和药效团指纹。这些三维形状和药效团指纹也可以预测感知气味相似度(R2 = 0.514)。最后,我们确定了关键的分子结构特征,有助于预测与丁香酚和香兰素结构相似的化合物之间的感官相似性。我们的模型根据嗅觉嗅觉的活动特征和气味剂三维结构的相似性来预测气味,可以通过将大量气味剂的信息压缩到400个嗅觉嗅觉的活动特征中来帮助理解嗅觉感知。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Chemical Senses
Chemical Senses 医学-行为科学
CiteScore
8.60
自引率
2.90%
发文量
25
审稿时长
1 months
期刊介绍: Chemical Senses publishes original research and review papers on all aspects of chemoreception in both humans and animals. An important part of the journal''s coverage is devoted to techniques and the development and application of new methods for investigating chemoreception and chemosensory structures.
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