A quantitative structure-retention relationship for the prediction of retention indices of the essential oils of Ammoides atlantica

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Abstract

A simple, descriptive and interpretable model, based on a quantitative structure-retention relationship (QSRR), was developed using the genetic algorithm- multiple linear regression (GA-MLR) approach for the prediction of the retention indices (RI) of essential oil components. By molecular modeling, three significant descriptors related to the RI values of the essential oils were identified. A data set was selected consisting of the retention indices for 32 essential oil molecules with a range of more than 931 compounds. Then, a suitable set of the molecular descriptors was calculated and the important descriptors were selected with the aid of the genetic algorithm and multiple regression method. A model with a low prediction error and a good correlation coefficient was obtained. This model was used for the prediction of the RI values of some essential oil components which were not used in the modeling procedure.

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Azar, P. A., Nekoei, M., Siavash, R., Ganjali, M. R., & Zare, K. (2011). A quantitative structure-retention relationship for the prediction of retention indices of the essential oils of Ammoides atlantica. Journal of the Serbian Chemical Society, 76(6), 891–902. https://doi.org/10.2298/JSC100219076A

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