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  5. Machine learning-based assessment of sustainable extraction methodologies tackling the biotechnological exploitation of Arnica montana extracts

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Article
en
2025

Machine learning-based assessment of sustainable extraction methodologies tackling the biotechnological exploitation of Arnica montana extracts

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en
2025
Vol 492 (Pt 1)
Vol. 492
DOI: 10.1016/j.foodchem.2025.145235

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Jesus Simal Gandara
Jesus Simal Gandara

Universidade de Vigo

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Paula Garcia‐Oliveira
Lucía Cassani
Aurora Silva
+5 more

Abstract

Heat-assisted (HAE), ultrasound-assisted (UAE), microwave-assisted (MAE), and pressurized liquid extraction (PLE) represent diverse techniques with distinct physical principles that influence the efficiency and selectivity of bioactive compound recovery from Arnica montana (AM) flowers. These techniques are expected to generate unique metabolite profiles, affecting the composition and functionality of extracts. This study combined untargeted metabolomics with machine learning-based chemometrics and a comprehensive assessment of in vitro biological activities of hydroethanolic AM extracts obtained using the four techniques. PLE yielded the most distinctive phytochemical profile. All extracts contained key phenolics such as anthocyanins, lignans, and related compounds. MAE extract exhibited strong antioxidant and neuroprotective effects, associated with triterpenoid metabolites, while PLE extract showed anti-inflammatory, cytotoxic, and antioxidant activities, mainly influenced by anthocyanins and flavonols. These findings deepen our understanding of how extraction technologies shape the functional potential of AM extracts, facilitating their application as nutraceuticals or bioactive ingredients in the food sector.

How to cite this publication

Paula Garcia‐Oliveira, Lucía Cassani, Aurora Silva, Clara Grosso, M. Fátima Barroso, Miguel A. Prieto, Jesus Simal Gandara, Pascual García-Pérez (2025). Machine learning-based assessment of sustainable extraction methodologies tackling the biotechnological exploitation of Arnica montana extracts. , 492(Pt 1), DOI: https://doi.org/10.1016/j.foodchem.2025.145235.

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Publication Details

Type

Article

Year

2025

Authors

8

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.1016/j.foodchem.2025.145235

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