Alkenyl pheromones: Raman spectroscopic analysis, DFT modeling, and machine learning for stereoisomerism evaluation.

Iuliana Vasian, Camelia Berghian-Grosan
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Abstract

Alkenyl pheromones are a class of insect sex pheromones that are characterized by the presence of one or more double bonds, which can be either in the E(trans) or Z(cis) configuration. This structural variation is essential in mating, as it influences reproductive behavior and provides a potential method for insect control. As a base for rapid and in-situ screening of synthetic pheromones or pheromone-based products, this study explores the potential of Raman spectroscopy to differentiate between the two geometrical isomers, E(trans) and Z(cis), of the alkenyl pheromones. As a case study, four types of pheromones were analyzed: 5-decen-1-ol, 8-dodecyl acetate, 9-dodecyl acetate, and 10-dodecyl acetate; in the latter case, the E(trans) isomer was particularly investigated. In this regard, a detailed analysis of their experimental Raman spectra has been realized along with a DFT-based study of the investigated compounds. Moreover, to find the best machine learning (ML) model that can efficiently identify the E(trans) or Z(cis) isomers of alkenyl pheromones, several algorithms and two different designs of datasets were tested. The results indicate that the ML models could identify patterns and accurately predict the class even if the training dataset contains both experimental and theoretical data.

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烯基信息素:拉曼光谱分析、DFT建模和立体异构评价的机器学习。
烯基信息素是一类昆虫性信息素,其特征是存在一个或多个双键,可以是E(反式)或Z(顺式)构型。这种结构变化在交配中是必不可少的,因为它影响生殖行为,并提供了一种潜在的昆虫控制方法。作为快速和原位筛选合成信息素或基于信息素的产品的基础,本研究探索了拉曼光谱区分烯基信息素的两种几何异构体E(反式)和Z(顺式)的潜力。以5-十二-1-醇、8-乙酸十二酯、9-乙酸十二酯和10-乙酸十二酯为例,分析了四种信息素;在后一种情况下,特别研究了E(反式)异构体。在这方面,对它们的实验拉曼光谱进行了详细的分析,并对所研究的化合物进行了基于dft的研究。此外,为了找到能够有效识别烯基信息素E(反式)或Z(顺式)异构体的最佳机器学习(ML)模型,我们测试了几种算法和两种不同的数据集设计。结果表明,即使训练数据集同时包含实验数据和理论数据,机器学习模型也可以识别模式并准确预测类别。
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