Improving phenolic compound extraction from Arnica montana flowers through multivariate optimization of heat and ultrasound-assisted methods
Paula Garcia‐Oliveira, Franklin Chamorro, Jesús Simal‐Gándara, Miguel A. Prieto, Lucía Cassani
Abstract
This study aimed to optimize phenolic compound extraction from Arnica montana (AM) L. flowers, comparing heat- and ultrasound-assisted extraction (HAE and UAE) through a multivariate approach. Critical parameters, including time, temperature or ultrasonic power, and ethanol concentration, were evaluated through a circumscribed central composite design. Unsupervised multivariate analysis of LC-MS/MS data identified key extraction conditions influencing the phenolic profile. Response surface methodology (RSM) determined optimal levels of enhancing yield and total phenolic content. Among the 24 identified phenolic compounds, dicaffeoylquinic acid was the most abundant. Ethanol concentration proved crucial in extracting specific phenolic compounds, supported by multivariate and RSM analyses. Optimal HAE conditions outperformed UAE, resulting in a 26% increase in phenolic compounds. Utilizing extraction cycles under these conditions, especially two cycles for HAE and three for UAE, surpassed traditional Soxhlet extraction, indicating potential industrial applications for AM flower extracts with improved efficiency and resource utilization compared to conventional methods. • Arnica flowers are rich in hydroxycinnamic acids, mainly dicaffeoylquinic acids. • A multivariate approach improved the phenolic extraction through two techniques. • Unsupervised analysis revealed that ethanol was key in extracting phenolics. • Extraction conditions were optimized for maximum phenolic content and yield. • Optimized heat extraction outperformed ultrasound extraction in phenolics and yield.