Department of Electrical and Electronics Engineering, Izmir Katip Celebi University, 35620 Izmir, Turkey.
Department of Food Engineering, Middle East Technical University, 06800 Ankara, Turkey.
Talanta. 2024 Jan 1;266(Pt 1):125021. doi: 10.1016/j.talanta.2023.125021. Epub 2023 Aug 2.
Real-time and on-site food spoilage monitoring is still a challenging issue to prevent food poisoning. At the onset of food spoilage, microbial and enzymatic activities lead to the formation of volatile amines. Monitoring of these amines with conventional methods requires sophisticated, costly, labor-intensive, and time consuming analysis. Here, anthocyanins rich red cabbage extract (ARCE) based colorimetric sensing system was developed with the incorporation of embedded machine learning in a smartphone application for real-time food spoilage monitoring. FG-UV-CD100 films were first fabricated by crosslinking ARCE-doped fish gelatin (FG) with carbon dots (CDs) under UV light. The color change of FG-UV-CD100 films with varying ammonia vapor concentrations was captured in different light sources with smartphones of various brands, and a comprehensive dataset was created to train machine learning (ML) classifiers to be robust and adaptable to ambient conditions, resulting in 98.8% classification accuracy. Meanwhile, the ML classifier was embedded into our Android application, SmartFood++, enabling analysis in about 0.1 s without internet access, unlike its counterpart using cloud operation via internet. The proposed system was also tested on a real fish sample with 99.6% accuracy, demonstrating that it has a great advantage as a potent tool for on-site real-time monitoring of food spoilage by non-specialized personnel.
实时现场食品腐败监测仍然是预防食物中毒的一个具有挑战性的问题。在食品腐败开始时,微生物和酶的活动会导致挥发性胺的形成。用常规方法监测这些胺需要复杂、昂贵、劳动密集型和耗时的分析。在这里,我们开发了一种基于花青素丰富的红甘蓝提取物(ARCE)的比色传感系统,该系统将嵌入式机器学习集成到智能手机应用程序中,用于实时食品腐败监测。首先通过在紫外光下交联 ARCE 掺杂鱼明胶(FG)与碳点(CDs)来制备 FG-UV-CD100 薄膜。用不同品牌的智能手机在不同光源下拍摄 FG-UV-CD100 薄膜随氨蒸气浓度变化的颜色变化,并创建一个综合数据集来训练机器学习(ML)分类器,使其具有鲁棒性和对环境条件的适应性,从而达到 98.8%的分类准确性。同时,我们将 ML 分类器嵌入到我们的 Android 应用程序 SmartFood++中,实现了无需互联网访问的大约 0.1 秒的分析,而不是使用互联网进行云操作的对应方法。该系统还在真实的鱼样本上进行了测试,准确率达到 99.6%,这表明它作为一种由非专业人员进行现场实时食品腐败监测的有力工具具有很大的优势。