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Odor-Structure Relationship Studies of Tetralin and Indan Musks

机译:Tetralin和Indan麝香的气味-结构关系研究

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A list of 147 tetralin- and indan-like compounds was compiled from the literature for investigating the relationship between molecular structure and musk odor. Each compound in the data set was represented by 374 CODESSA and 970 TAE descriptors. A genetic algorithm (GA) for pattern recognition analysis was used to identify a subset of molecular descriptors that could differentiate musks from nonmusks in a plot of the two largest principal components (PCs) of the data. A PC map of the 110 compounds in the training set using 45 molecular descriptors identified by the pattern recognition GA revealed an asymmetric data structure. Tetralin and indan musks were found to occupy a small, but well-defined region of the PC (descriptor) space, with the nonmusks randomly distributed in the PC plot. A three-layer feed-forward neural network trained by back propagation was used to develop a discriminant that correctly classified all the compounds in the training set as musk or nonmusk. The neural network was successfully validated using an external prediction of 37 compounds.
机译:从文献中收集了147种四氢萘类和茚满类化合物的清单,以研究分子结构与麝香气味之间的关系。数据集中的每种化合物均由374个CODESSA和970个TAE描述符表示。用于模式识别分析的遗传算法(GA)用于识别分子描述符的子集,该子集可以在数据的两个最大主成分(PC)图中区分麝香和非麝香。使用模式识别GA识别的45个分子描述符,对训练集中的110种化合物的PC图显示了不对称的数据结构。发现Tetralin和indan麝香占据了PC(描述符)空间的一小部分,但定义明确,非麝香随机分布在PC图中。通过反向传播训练的三层前馈神经网络用于开发判别式,该判别式将训练集中的所有化合物正确分类为麝香或非麝香。使用37种化合物的外部预测成功验证了神经网络。

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