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篇名
Assessment of lemon juice quality and adulteration by ultra-high performance liquid chromatography/ triple quadrupole mass spectrometry with interactive and interpretable machine learning   全文下載 全文下載
並列篇名
Assessment of lemon juice quality and adulteration by ultra-high performance liquid chromatography/ triple quadrupole mass spectrometry with interactive and interpretable machine learning
作者 Weiting Lyu (Weiting Lyu)Bo Yuan (Bo Yuan)Siyu Liu (Siyu Liu)James E. Simon (James E. Simon)Qingli Wu (Qingli Wu)
英文摘要
A total of 81 lemon juices samples were detected using an optimized UHPLC-QqQ-MS/MS method and colorimetric assays. Concentration of 3 organic acids (ascorbic acid, malic acid and citric acid), 3 saccharides (glucose, fructose and sucrose) and 6 phenolic acids (trans-p-coumaric acid, 3-hydroxybenzoic acid, 4-hydroxybenzoic acid, 3,4-dihydroxybenzoic acid, caffeic acid) were quantified. Their total polyphenol, antioxidant activity and Ferric reducing antioxidant power were also measured. For the prediction of authentic and adulterated lemon juices and commercially sourced lemonade beverages based on the acquired metabolic profile, machine learning models including linear discriminant analysis, Gaussian naïve Bayes, lasso-regularized logistic regression, random forest (RF) and support vector machine were developed based on training (70%)-cross-validation-testing (30%) workflow. The predicted accuracy on the testing set is 73e86% for different models. Individual conditional expectation analysis (how predicted probabilities change when the feature magnitude changes) was applied for model interpretation, which in particular revealed the close association of RF-probability prediction with nuance characteristics of the density distribution of metabolic features. Using established models, an open-source online dashboard was constructed for convenient classification prediction and interactive visualization in real practice.
起訖頁 275-286
關鍵詞 Interpretable machine learningCitrus limonQuality controlR shiny applicationUHPLC-QqQ-MS/MS
刊名 JOURNAL OF FOOD AND DRUG ANALYSIS  
期數 202106 (29:2期)
出版單位 衛生福利部食品藥物管理署
該期刊-上一篇 Ursolic acid restores sensitivity to gemcitabine through the RAGE/NF-kB/MDR1 axis in pancreatic cancer cells and in a mouse xenograft model
該期刊-下一篇 Rapid determination of benzophenone derivatives in cereals using FaPEx coupled with ultraehigh-performance liquid chromatographyetandem mass spectrometry
 

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