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An eco-friendly approach for analysing sugars, minerals, and colour in brown sugar using digital image processing and machine learning.
Alves, Vandressa; Dos Santos, Jeferson M; Viegas, Olga; Pinto, Edgar; Ferreira, Isabel M P L V O; Aparecido Lima, Vanderlei; Felsner, Maria L.
Afiliação
  • Alves V; Department of Chemistry, State University of Midwestern at Paraná (UNICENTRO), Vila Carli, Zip Code 85040-080, Guarapuava City, Paraná, Brazil. Electronic address: alvesvandressa@gmail.com.
  • Dos Santos JM; Department of Chemistry, State University of Midwestern at Paraná (UNICENTRO), Vila Carli, Zip Code 85040-080, Guarapuava City, Paraná, Brazil. Electronic address: jefersonmeiradossantos@yahoo.com.br.
  • Viegas O; LAQV/REQUIMTE, Faculty of Nutrition and Food Science of the University of Porto, Zip Code 4150-180, Porto, Portugal. Electronic address: olgaviegas@fcna.up.pt.
  • Pinto E; REQUIMTE/LAQV, ESS, Polytechnic of Porto, Zip Code 4200-072, Porto, Portugal.
  • Ferreira IMPLVO; LAQV/REQUIMTE, Chemical Sciences Department, Faculty of Pharmacy, University of Porto, Zip Code 4050-313 Porto, Portugal. Electronic address: isabel.ferreira@ff.up.pt.
  • Aparecido Lima V; Department of Chemistry, Federal University of Technology - Paraná (UTFPR), Zip Code 85503-390, Pato Branco City, Paraná, Brazil. Electronic address: valima@utfpr.edu.br.
  • Felsner ML; Department of Chemistry, State University of Midwestern at Paraná (UNICENTRO), Vila Carli, Zip Code 85040-080, Guarapuava City, Paraná, Brazil; Department of Chemistry, State University of Londrina (UEL), Zip Code 86057-970, Londrina City, Paraná, Brazil. Electronic address: felsner@unicentro.br.
Food Res Int ; 191: 114673, 2024 Sep.
Article em En | MEDLINE | ID: mdl-39059905
ABSTRACT
Brown sugar is a natural sweetener obtained by thermal processing, with interesting nutritional characteristics. However, it has significant sensory variability, which directly affects product quality and consumer choice. Therefore, developing rapid methods for its quality control is desirable. This work proposes a fast, environmentally friendly, and accurate method for the simultaneous analysis of sucrose, reducing sugars, minerals and ICUMSA colour in brown sugar, using an innovative strategy that combines digital image processing acquired by smartphone cell with machine learning. Data extracted from the digital images, as well as experimentally determined contents of the physicochemical characteristics and elemental profile were the variables adopted for building predictive regression models by applying the kNN algorithm. The models achieved the highest predictive capacity for the Ca, ICUMSA colour, Fe and Zn, with coefficients of determination (R2) ≥ 92.33 %. Lower R2 values were observed for sucrose (81.16 %), reducing sugars (85.67 %), Mn (83.36 %) and Mg (86.97 %). Low data dispersion was found for all the predictive models generated (RMSE < 0.235). The AGREE Metric assessed the green profile and determined that the proposed approach is superior in relation to conventional methods because it avoids the use of solvents and toxic reagents, consumes minimal energy, produces no toxic waste, and is safer for analysts. The combination of digital image processing (DIP) and the kNN algorithm provides a fast, non-invasive and sustainable analytical approach. It streamlines and improves quality control of brown sugar, enabling the production of sweeteners that meet consumer demands and industry standards.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Processamento de Imagem Assistida por Computador / Cor / Aprendizado de Máquina / Minerais Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Processamento de Imagem Assistida por Computador / Cor / Aprendizado de Máquina / Minerais Idioma: En Ano de publicação: 2024 Tipo de documento: Article