Color Dynamics, Pigments and Antioxidant Capacity in Pouteria sapota Puree During Frozen Storage: A Correlation Study Using CIELAB Color Space and Machine Learning Models.
José Antonio Sánchez-Franco, Nelly Del Socorro Cruz-Cansino, Quinatzin Yadira Zafra-Rojas, Daniel Ayala-Niño, Alexis Ayala-Niño
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引用次数: 0
Abstract
The accurate prediction of bioactive compounds and antioxidant activity in food matrices is critical for optimizing nutritional quality and industrial applications. This study compares the performance of multiple linear regression (MLR) and artificial neural networks (ANN) in predicting antioxidant activity (DPPH, ABTS), total carotenoids, and anthocyanins in mamey pulp, using color variables (CIELab) as predictors. Our results demonstrate that ANN models consistently outperform MLR, achieving lower mean squared error (MSE) and mean absolute error (MAE), alongside higher coefficients of determination (R2). For instance, ANN improved R2 values from 0.54 to 0.78 for DPPH, from 0.70 to 0.92 for ABTS, and from 0.45 to 0.87 for total carotenoids. These results highlight the superior ability of ANN to capture nonlinear relationships in complex food systems. Furthermore, the integration of ANN with image analysis techniques offers a promising approach for nondestructive quality control during storage and processing. This research underscores the potential of ANN as a powerful tool for screening bioactive compounds and optimizing functional food development, contributing to advancements in food science and technology.
期刊介绍:
Plant Foods for Human Nutrition (previously Qualitas Plantarum) is an international journal that publishes reports of original research and critical reviews concerned with the improvement and evaluation of the nutritional quality of plant foods for humans, as they are influenced by:
- Biotechnology (all fields, including molecular biology and genetic engineering)
- Food science and technology
- Functional, nutraceutical or pharma foods
- Other nutrients and non-nutrients inherent in plant foods