Department of Electrical and Electronics Engineering, Izmir Katip Celebi University, 35620, Izmir, Turkey.
Department of Biocomposite Engineering, Graduate School of Natural and Applied Sciences, Izmir Katip Celebi University, 35620, Izmir, Turkey.
Anal Sci. 2022 Feb;38(2):347-358. doi: 10.2116/analsci.21P253. Epub 2022 Mar 22.
Conventional enzyme-based glucose quantification approaches are not feasible due to their high cost, specific working temperatures, short shelf life, and poor stability. Therefore, a portable platform, which offers rapid response, cost-efficiency, and high sensitivity, is indispensable for the healthcare of diabetes. In this study, we proposed a portable platform incorporating gold (Au) and silver (Ag) nanoparticles (NPs) with a smartphone application based on machine learning for non-enzymatic glucose quantification. The color change obtained from the reaction of small and large Au/Ag NPs with glucose was captured using a smartphone camera to create a dataset for the training of machine-learning classifiers. Our custom-designed user-friendly smartphone application called "GlucoQuantifier" uses a cloud system to communicate with a remote server running a machine-learning classifier. Among the tested classifiers, linear discriminant analysis exhibits the best classification performance (93.63%) with small Au/Ag NPs and it demonstrates that incorporating Au/Ag NPs with machine learning under a smartphone application can be used for non-enzymatic glucose quantification.
由于成本高、工作温度特定、保质期短和稳定性差,基于传统酶的葡萄糖定量方法不可行。因此,对于糖尿病的医疗保健,一个具有快速响应、成本效益和高灵敏度的便携式平台是不可或缺的。在本研究中,我们提出了一种基于机器学习的带有智能手机应用的金(Au)和银(Ag)纳米粒子(NPs)的便携式平台,用于非酶葡萄糖定量。使用智能手机相机捕捉小 Au/Ag NPs 与葡萄糖反应产生的颜色变化,以创建用于训练机器学习分类器的数据集。我们设计的名为“GlucoQuantifier”的用户友好型智能手机应用程序使用云系统与运行机器学习分类器的远程服务器进行通信。在所测试的分类器中,线性判别分析对小 Au/Ag NPs 表现出最佳的分类性能(93.63%),这表明在智能手机应用程序下结合 Au/Ag NPs 和机器学习可用于非酶葡萄糖定量。