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Application of multivariate regression and artificial neural network modelling for prediction of physical and chemical properties of medicinal plants aqueous extracts (CROSBI ID 269719)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Jurinjak Tušek, Ana ; Jurina, Tamara ; Benković, Maja ; Valinger, Davor ; Belščak-Cvitanović, Ana ; Gajdoš Kljusurić, Jasenka Application of multivariate regression and artificial neural network modelling for prediction of physical and chemical properties of medicinal plants aqueous extracts // Journal of applied research on medicinal and aromatic plants, 16 (2020), 100229, 8

Podaci o odgovornosti

Jurinjak Tušek, Ana ; Jurina, Tamara ; Benković, Maja ; Valinger, Davor ; Belščak-Cvitanović, Ana ; Gajdoš Kljusurić, Jasenka

engleski

Application of multivariate regression and artificial neural network modelling for prediction of physical and chemical properties of medicinal plants aqueous extracts

In recent years, multivariate modelling techniques have been employed with the aim of analysing, describing, and generally interpreting multidimensional data obtained from experiments. The objective of this study was to evaluate the applicability of multiple linear regression, nonlinear regression, piecewise linear regression, and artificial neural network modelling for the prediction of the physical properties (total dissolved solids, extraction yield), and chemical properties (total phenolic content and antioxidant activity) of the aqueous extracts of nine medicinal plants (dandelion, camomile, lavender, lemon balm, marigold, mint, nettle, plantain, and yarrow), prepared in dynamic experiments based on the extraction conditions (time and temperature), and plant species. Results indicated that simple multivariate regression models could be used for prediction of physical and chemical properties of medicinal plants aqueous extracts (the highest R2 were obtained for total phenolic content), while the artificial neural network proved a very effective tool (R2 > 0.9) for simultaneous prediction of both physical and chemical properties of medicinal plants aqueous extracts.

multivariate regression ; artificial neural network ; medicinal plants aqueous extracts

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Podaci o izdanju

16

2020.

100229

8

objavljeno

2214-7861

Povezanost rada

Biotehnologija, Prehrambena tehnologija

Indeksiranost