Ma Peihua, Xu Wenhao, Teng Zi, Luo Yaguang, Gong Cheng, Wang Qin
Department of Nutrition and Food Science, College of Agriculture and Natural Resources, University of Maryland, College Park, Maryland 20742, United States.
Department of Chemistry and Biochemistry, College of Computer, Mathematical and Natural Science, University of Maryland, College Park, Maryland 20742, United States.
ACS Sens. 2022 Jul 22;7(7):1847-1854. doi: 10.1021/acssensors.2c00255. Epub 2022 Jul 14.
The static labels presently prevalent on the food market are confronted with challenges due to the assumption that a food product only undergoes a limited range of predefined conditions, which cause elevated safety risks or waste of perishable food products. Hence, integrated systems for measuring food freshness in real time have been developed for improving the reliability, safety, and sustainability of the food supply. However, these systems are limited by poor sensitivity and accuracy. Here, a metal-organic framework mixed-matrix membrane and deep learning technology were combined to tackle these challenges. UiO-66-OH and polyvinyl alcohol were impregnated with six chromogenic indicators to prepare sensor array composites. The sensors underwent color changes after being exposed to ammonia at different pH values. The limit of detection of 80 ppm for trimethylamine was obtained, which was practically acceptable in the food industry. Four state-of-the-art deep convolutional neural networks were applied to recognize the color change, endowing it with high-accuracy freshness estimation. The simulation test for chicken freshness estimation achieved accuracy up to 98.95% by the WISeR-50 algorithm. Moreover, 3D printing was applied to create a mold for possible scale-up production, and a portable food freshness detector platform was conceptually built. This approach has the potential to advance integrated and real-time food freshness estimation.
目前食品市场上普遍使用的静态标签面临着挑战,因为人们认为食品仅在有限的一系列预定义条件下保存,这会导致更高的安全风险或易腐食品的浪费。因此,为提高食品供应的可靠性、安全性和可持续性,已开发出实时测量食品新鲜度的集成系统。然而,这些系统受到灵敏度和准确性差的限制。在此,将金属有机框架混合基质膜与深度学习技术相结合以应对这些挑战。用六种显色指示剂浸渍UiO-66-OH和聚乙烯醇以制备传感器阵列复合材料。传感器在暴露于不同pH值的氨后会发生颜色变化。获得了三甲胺80 ppm的检测限,这在食品工业中是实际可接受的。应用四种最先进的深度卷积神经网络来识别颜色变化,赋予其高精度的新鲜度估计。通过WISeR-50算法对鸡肉新鲜度估计的模拟测试达到了9"
8.95%的准确率。此外,应用3D打印创建了一个用于扩大生产规模的模具,并从概念上构建了一个便携式食品新鲜度检测平台。这种方法有可能推动集成和实时的食品新鲜度估计。