Happy Hypoxia Early Detection Tool in IoT Based for COVID-19 Patients Using SpO2 Sensor, Body Temperature and Electrocardiogram (ECG)

Wanda Vernandhes, N. S. Salahuddin, R.R Sri Poernomo Sari, Trini Saptariani
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引用次数: 2

Abstract

This research was aims to design a prototype and application for early detection of Happy Hypoxia symptoms in COVID-19 patients based on the Internet of Things (IoT). The experimental board consists of a microcontroller integrated with a pulse oximetry sensor, a heart rate sensor and a body temperature sensor. To determine the feasibility of the tool, an accuracy test is carried out. Accuracy shows the value of the proximity of the measurement results to the reference value or standard value. Accuracy is obtained by calculating the error value. The accuracy of the sensors used in this study refers to standard medical equipment that has been calibrated. In this study, the accuracy value was obtained by referring to the mean of error rate of each sensor. The sensor reading value is sent from the microcontroller to firebase as a cloud database and then displayed on the application dashboard as a user interface. From this data, it is hoped that it can help COVID-19 sufferers to detect the symptoms of Happy Hypoxia and help medical experts for prognostic or therapeutic purposes.
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基于SpO2传感器、体温、心电图的物联网快乐缺氧早期检测工具
本研究旨在设计一种基于物联网(IoT)的新型冠状病毒肺炎患者快乐缺氧症状早期检测原型及应用。实验板由微控制器集成脉搏血氧传感器、心率传感器和体温传感器组成。为了确定该工具的可行性,进行了精度测试。准确度表示测量结果与参考值或标准值的接近程度。通过计算误差值来获得精度。本研究中使用的传感器的精度是指已校准的标准医疗设备。在本研究中,准确度值是根据各传感器的误差率的平均值得到的。传感器读数值作为云数据库从微控制器发送到firebase,然后作为用户界面显示在应用程序仪表板上。从这些数据中,希望能帮助COVID-19患者发现快乐缺氧的症状,并帮助医学专家进行预后或治疗。
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