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Cysewski, Piotr; Jeliński, Tomasz; Przybyłek, Maciej; Gliniewicz, Natalia; Majkowski, Marcel; Wąs, Michał (2025) Navigating the Deep Eutectic Solvent Landscape: Experimental and Machine Learning Solubility Explorations of Syringic, p-Coumaric, and Caffeic Acids. International Journal of Molecular Sciences, 26 (20). doi:10.3390/ijms262010099

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Reference TypeJournal (article/letter/editorial)
TitleNavigating the Deep Eutectic Solvent Landscape: Experimental and Machine Learning Solubility Explorations of Syringic, p-Coumaric, and Caffeic Acids
JournalInternational Journal of Molecular Sciences
AuthorsCysewski, PiotrAuthor
Jeliński, TomaszAuthor
Przybyłek, MaciejAuthor
Gliniewicz, NataliaAuthor
Majkowski, MarcelAuthor
Wąs, MichałAuthor
Year2025 (October 16)Volume26
Issue20
PublisherMDPI AG
DOIdoi:10.3390/ijms262010099Search in ResearchGate
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Mindat Ref. ID19086659Long-form Identifiermindat:1:5:19086659:6
GUID0
Full ReferenceCysewski, Piotr; Jeliński, Tomasz; Przybyłek, Maciej; Gliniewicz, Natalia; Majkowski, Marcel; Wąs, Michał (2025) Navigating the Deep Eutectic Solvent Landscape: Experimental and Machine Learning Solubility Explorations of Syringic, p-Coumaric, and Caffeic Acids. International Journal of Molecular Sciences, 26 (20). doi:10.3390/ijms262010099
Plain TextCysewski, Piotr; Jeliński, Tomasz; Przybyłek, Maciej; Gliniewicz, Natalia; Majkowski, Marcel; Wąs, Michał (2025) Navigating the Deep Eutectic Solvent Landscape: Experimental and Machine Learning Solubility Explorations of Syringic, p-Coumaric, and Caffeic Acids. International Journal of Molecular Sciences, 26 (20). doi:10.3390/ijms262010099
In(2025, October) International Journal of Molecular Sciences Vol. 26 (20). MDPI AG

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