采后
代谢组学
花青素
飞燕草素
芍药苷
类黄酮
食品科学
化学
人工智能
氰化物
植物
计算机科学
生物
生物化学
色谱法
抗氧化剂
作者
Min Jeong Kang,Ronald B. Pegg,William L. Kerr,M. Lenny Wells,Patrick J. Conner,Joon Hyuk Suh
标识
DOI:10.1016/j.foodchem.2024.140814
摘要
Nut kernel color is a crucial quality indicator affecting the consumers first impression of the product. While growing evidence suggests that plant phenolics and their derivatives are linked to nut kernel color, the compounds (biomarkers) responsible for kernel color stability during storage remain elusive. Here, pathway-based metabolomics with machine learning algorithms were employed to identify key metabolites of postharvest pecan color stability. Metabolites in phenylpropanoid, flavonoid, and anthocyanin biosynthetic pathways were analyzed in the testa of nine pecan cultivars using liquid chromatography-mass spectrometry. With color measurements, different machine learning models were compared to find relevant biomarkers of pecan color phenotypes. Results revealed potential marker compounds that included flavonoid precursors and anthocyanidins as well as anthocyanins (e.g., peonidin, delphinidin-3-O-glucoside). Our findings provide a foundation for future research in the area, and will help select genes/proteins for the breeding of pecans with stable and desirable kernel color.
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