Identification of glucose levels in urine based on classification using k-nearest neighbor algorithm method

IF 0.5 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC International Journal on Smart Sensing and Intelligent Systems Pub Date : 2023-01-01 DOI:10.2478/ijssis-2023-0006
A. Yudhana, Fathiyyah Warsino, S. A. Akbar, Fatma Nuraisyah, Ilham Mufandi
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Abstract

Abstract Glucose monitoring carried out through the urine testing to make it easier for patients to check their blood sugar without having to physically injure themselves and to prevent external bacteria from entering the body, which happens while using needles. This study aims to classify glucose-containing urine specimens based on diabetes levels by using the K-nearest neighbor method. Classification of urine specimens is achieved by using the Benedict method to produce the color of the urine specimen and the AS7262 sensor to detect the color produced by the specimen. The results showed that the classification of data on urine specimens has an accuracy of 96.33%. Previous studies conducted this experiment using a photodiode sensor and a TCS sensor, which produced red, green, and blue (RGB) colors. For identifying the color of a specimen, the AS7262 sensor can produce six colors (red, green, blue, yellow, violet, and orange) to identify the glucose level.
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基于k近邻算法分类的尿液葡萄糖水平识别
摘要通过尿液检测进行血糖监测,使患者更容易检查血糖,而不必对自己造成身体伤害,并防止外部细菌进入体内,这种情况在使用针头时发生。本研究旨在使用K近邻法根据糖尿病水平对含葡萄糖尿液样本进行分类。尿液样本的分类是通过使用Benedict方法产生尿液样本的颜色和使用AS7262传感器检测样本产生的颜色来实现的。结果表明,尿液样本数据的分类准确率为96.33%。先前的研究使用光电二极管传感器和TCS传感器进行了这项实验,产生红色、绿色和蓝色(RGB)。为了识别样本的颜色,AS7262传感器可以产生六种颜色(红色、绿色、蓝色、黄色、紫色和橙色)来识别葡萄糖水平。
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来源期刊
CiteScore
2.70
自引率
8.30%
发文量
15
审稿时长
8 weeks
期刊介绍: nternational Journal on Smart Sensing and Intelligent Systems (S2IS) is a rapid and high-quality international forum wherein academics, researchers and practitioners may publish their high-quality, original, and state-of-the-art papers describing theoretical aspects, system architectures, analysis and design techniques, and implementation experiences in intelligent sensing technologies. The journal publishes articles reporting substantive results on a wide range of smart sensing approaches applied to variety of domain problems, including but not limited to: Ambient Intelligence and Smart Environment Analysis, Evaluation, and Test of Smart Sensors Intelligent Management of Sensors Fundamentals of Smart Sensing Principles and Mechanisms Materials and its Applications for Smart Sensors Smart Sensing Applications, Hardware, Software, Systems, and Technologies Smart Sensors in Multidisciplinary Domains and Problems Smart Sensors in Science and Engineering Smart Sensors in Social Science and Humanity
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