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Machine learning based on UV-Vis full spectra for the simultaneous determination of curcumin, demethoxycurcumin, bisdemethoxycurcumin in Curcuma longa L.

Nguyen Thi Van Anh Nguyen Ha Anh Nguyen Duc Phong Nguyen Duc Thanh
Received: 12 Nov 2025
Revised: 28 Dec 2025
Accepted: 29 Dec 2025
Published: 28 Feb 2026

Article Details

How to Cite
Nguyen Thi Van Anh, Nguyen Ha Anh, Nguyen Duc Phong, Nguyen Duc Thanh. "Machine learning based on UV-Vis full spectra for the simultaneous determination of curcumin, demethoxycurcumin, bisdemethoxycurcumin in Curcuma longa L.". Vietnam Journal of Food Control. vol. 9, no. 1, pp. 1-8, 2026
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Main Article Content

Abstract

This study has developed a rapid and simple method based on the UV-Vis full spectra coupled with machine learning for the quantitative prediction of curcumin, demethoxycurcumin and bisdemethoxycurcumin in turmeric rhizomes. The UV-Vis spectral data and HPLC quantification results of the individual components from 55 turmeric rhizome samples were utilized for model development and training. Analogous data matrices from an independent set of 24 samples were used for external validation of the developed models. Four machine learning models were investigated, comprising two linear multivariate regression algorithms: principal component regression (PCR) and partial least squares regression (PLSR), two non-linear multivariate regression algorithms: artificial neural network (ANN) and random forest (RF). The results demonstrated that the linear multivariate regression models exhibited superior analytical performance. Specifically, PCR yielded a coefficient of determination (R²) values from 0.957 to 0.982 with root mean square error (RMSE) values from 3.086 to 1.295, while PLSR achieved R² values from 0.956 to 0.979 and RMSE values from 3.116 to 1.139. However, when comparing the HPLC-quantified contents with the values predicted by the two models, some samples still exhibited relative errors exceeding 20%. This study confirms the feasibility of rapidly and simultaneously predicting the contents of curcumin, demethoxycurcumin and bisdemethoxycurcumin in turmeric rhizomes using UV-Vis spectral data coupled with either PLSR or PCR models, offering an efficient alternative to conventional methods.

Keywords:

Machine Learning, UV-Vis, curcumin, turmeric.

References

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