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Natural Product Research
Formerly Natural Product Letters
Volume 33, 2019 - Issue 13
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Short Communication

Fast and non–derivative method based on high–performance liquid chromatography–charged aerosol detection for the determination of fatty acids from Agastache rugosa (Fisch. et Mey.) O. Ktze. seeds

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Pages 1969-1974 | Received 14 Feb 2018, Accepted 18 May 2018, Published online: 29 May 2018
 

Abstract

This study utilised response surface methodology to optimise the conditions for the extraction of A. rugosa seeds oil (ARO). Single–factor experiment and response surface methodology (RSM) were performed to identify the extraction time, liquid–solid ratio and extraction temperature that provided the highest yield of ARO. The optimal extraction time, liquid–solid ratio and extraction temperature were 8 h, 4:1 mL/g and 55 °C. The fatty acids (FAs) content and oil yield obtained through the optimised impregnation–extraction process were 19.67 mg/g and 32.1%. These values matched well with the predicted values. Linolenic acid was identified to be the main active ingredient of ARO. The high–performance liquid chromatography–charged aerosol detection method presented here is fast and does not require derivatisation. Therefore, it could be used to quantitatively analyse the FAs present in ARO and applied to detect compounds with low or no ultraviolet response.

Acknowledgement

We are grateful to Hongmei Zhang of School of Pharmacy, Shanghai University of Traditional Chinese Medicine for raw herbals identification of origin plant of A. rugosa seeds.

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