Predictive modeling of antioxidant activity in Syzygium malaccense leaf extracts using image processing and machine learning

IF 2.701
Adriana Cristina Gluitz, Tatiane Luiza Cadorin Oldoni, Isabel Davoglio Pitt, Vanderlei Aparecido de Lima
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引用次数: 0

Abstract

S. malaccense, from the Myrtaceae family, is used in traditional medicine and is rich in flavonoids and phenolic compounds. This study evaluated the antioxidant potential of S. malaccense leaf extracts and their fractions using DPPH and ABTS radical scavenging assays, Ferric Reducing Antioxidant Power (FRAP), and total phenolic content. Spectroscopic methods were used, and greyscale tones from the RGB channels of assay images were analyzed through machine learning (ML) models such as SVM, decision tree, Random Forest (RF), XGBOOST, LightGBM, and CatBoost. The performance of these models was assessed using determination coefficients (R2) and root mean square error (RMSE). XGBOOST and RF were the best performers, with R2 values ranging from 88.65 to 99.35% for training data and 60.12–95.50% for test data. GLM analysis showed that acetate solvent resulted in the highest FRAP values, while hexane had the lowest. Ethanol extraction yielded the highest ABTS values, and dichloromethane was best for DPPH. These modeling approaches using GLM, images, and ML algorithms show promise for measuring the antioxidant properties of plants.

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期刊介绍: The Journal of Food Science and Technology (JFST) is the official publication of the Association of Food Scientists and Technologists of India (AFSTI). This monthly publishes peer-reviewed research papers and reviews in all branches of science, technology, packaging and engineering of foods and food products. Special emphasis is given to fundamental and applied research findings that have potential for enhancing product quality, extend shelf life of fresh and processed food products and improve process efficiency. Critical reviews on new perspectives in food handling and processing, innovative and emerging technologies and trends and future research in food products and food industry byproducts are also welcome. The journal also publishes book reviews relevant to all aspects of food science, technology and engineering.
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