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Multivariate statistical analysis of a large odorants database aimed at revealing similarities and links between odorants and odors

机译:对旨在揭示异味和气味与气味的相似性和联系的大型气味数据库的多变量统计分析

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摘要

The perception of odor is an important component of smell; the first step of odor detection, and the discrimination of structurally diverse odorants depends on their interactions with olfactory receptors (ORs). Indeed, the perception of an odor's quality results from a combinatorial coding, in which the deciphering remains a major challenge. Several studies have successfully established links between odors and odorants by categorizing and classifying data. Hence, the categorization of odors appears to be a promising way to manage odors. In the proposed study, we performed a computational analysis using odor descriptions of the odorants present in Flavor-Base 9th Edition (2013). We converted the Flavor-Base data into a binary matrix (1 when the odor note appears in the odor description, 0 otherwise). We retained 251 odor notes and 3508 odorants, considering only the orthonasal perception. Two categorization methods were performed: agglomerative hierarchical clustering (AHC), and self-organizing map (SOM). AHC was based on a measure of the distance between the elements performed by multidimensional scaling (MDS) for the odorants, and correspondence analysis (CA) for the odor notes. The results demonstrated that the SOM classes appeared to be less dependent on the frequency of the odor notes than those of the AHC clusters. SOMs are especially useful for identifying the associations between less than 4 or 5 odor notes within groups of odorants. The obtained results highlight subsets of odorants sharing similar groups of odor notes, suggesting an interesting and promising way of using computational approaches to help decipher olfactory coding.
机译:气味的感知是气味的重要组成部分;气味检测的第一步,以及结构不同的气味剂的辨别取决于它们与嗅觉受体(或)的相互作用。实际上,对气味的质量从组合编码产生了感知,其中解密仍然是一个重大挑战。通过分类和分类数据,若干研究成功地建立了异味和气味之间的联系。因此,气味的分类似乎是管理气味的有希望的方法。在拟议的研究中,我们使用风味基地第9版(2013)中存在的气味剂的气味描述进行了计算分析。我们将风味基础数据转换为二进制矩阵(当气味笔记出现在气味描述中时,否则为0)。我们保留了251个气味笔记和3508臭臭的气味,仅考虑正交的看法。执行了两个分类方法:附聚层次聚类(AHC)和自组织地图(SOM)。 AHC基于通过用于气味剂的多维缩放(MDS)和气味注意事项的对应分析(CA)所执行的元件之间的距离的量度。结果表明,SOM类似乎不太依赖于气味笔记的频率比AHC集群的频率。 SOM对于在气味剂组内识别少于4或5个气味纸张之间的关联特别有用。所获得的结果突出了共享类似气味笔记的气味的子集,这表明利用计算方法有趣和有希望帮助破译嗅探编码。

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