Deep Learning based Colorimetric Classification of Glucose with Au-Ag nanoparticles using Smartphone

Ö. B. Mercan, ve Volkan Kılıç
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引用次数: 4

Abstract

Glucose is an extremely important molecule as an energy source and human body function. Diabetes, which ranks among the diseases of the age, is detected based on the glucose level in the human body. Therefore, quantification of glucose is important to develop research and applications of diabetes, which is an important health problem. This study aims to classify glucose concentration with deep learning based colorimetric analysis using a smartphone. The color changes obtained as a result of the reaction of Au-Ag nanoparticles with different concentrations of glucose were captured using a smartphone camera to create a dataset. The proposed deep learning model was trained with this dataset and glucose concentration was classified with 95.93% accuracy. The deep learning model was integrated into our custom-designed Android application, DeepGlucose, to enable glucose classification via a smartphone.
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基于深度学习的智能手机Au-Ag纳米颗粒葡萄糖比色分类
葡萄糖是一种极其重要的能量来源和人体功能分子。糖尿病是根据人体内的葡萄糖水平检测出来的,属于老年病。因此,糖尿病是一个重要的健康问题,葡萄糖的定量对糖尿病的研究和应用具有重要意义。本研究旨在利用智能手机进行基于深度学习的比色分析,对葡萄糖浓度进行分类。通过智能手机摄像头捕捉到金银纳米颗粒与不同浓度葡萄糖反应后的颜色变化,从而创建了一个数据集。利用该数据集对所提出的深度学习模型进行训练,对葡萄糖浓度的分类准确率达到95.93%。深度学习模型集成到我们定制的Android应用程序DeepGlucose中,通过智能手机实现葡萄糖分类。
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