Makino Yoshio, Kurokawa Yuta, Kawai Kenji, Akihiro Takashi
Graduate School of Agricultural and Life Sciences, The University of Tokyo, Tokyo 1138657, Japan.
BelleGreenWise Co., Ltd., Nagoya 4600007, Aichi, Japan.
Metabolites. 2025 Feb 21;15(3):145. doi: 10.3390/metabo15030145.
Effectiveness of modified atmosphere (MA) packaging for the preservation of the freshness of vegetable soybeans was confirmed by using metabolomics combined with convolutional neural networks (CNNs). Stored under a low O, high CO environment, the vegetable soybeans' freshness was tracked through changes in hue angle on the surface of the crops and metabolite levels compared to those stored under normoxia. MA packaging slowed respiration and reduced pectin decomposition, succinic acid oxidation, and fatty acid consumption, all linked to freshness maintenance. Using 62 key metabolite concentrations as inputs, CNNs classified vegetable soybean freshness into seven categories with 92.9% accuracy, outperforming traditional linear discriminant analysis by 14.3%. These findings demonstrate MA packaging's effectiveness in extending freshness of vegetable soybeans by monitoring specific metabolic changes. This will contribute to the advancement of research aimed at elucidating the relationship between freshness and metabolism in horticultural crops.
通过将代谢组学与卷积神经网络(CNN)相结合,证实了气调包装(MA)对保持毛豆新鲜度的有效性。在低氧、高二氧化碳环境下储存时,通过与常氧储存的毛豆相比,追踪作物表面色调角的变化和代谢物水平,来监测毛豆的新鲜度。气调包装减缓了呼吸作用,减少了果胶分解、琥珀酸氧化和脂肪酸消耗,所有这些都与保持新鲜度有关。以62种关键代谢物浓度为输入,卷积神经网络将毛豆新鲜度分为七类,准确率达92.9%,比传统线性判别分析高出14.3%。这些发现表明,气调包装通过监测特定的代谢变化,在延长毛豆新鲜度方面是有效的。这将有助于推动旨在阐明园艺作物新鲜度与代谢之间关系的研究进展。