使用低成本物联网健康监测系统进行生命体征实时监测和数据管理

IF 1 Q4 HEALTH POLICY & SERVICES Journal of Health Management Pub Date : 2024-05-23 DOI:10.1177/09720634241246926
Antim Dev Mishra, Bindu Thakral, Alpana Jijja, Nitin Sharma
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引用次数: 0

摘要

本研究介绍了一种基于物联网(IoT)的低成本健康监测系统的创建和评估,该系统可对体温、脉搏、血氧饱和度(SpO2)和血压(BP)(收缩压和舒张压)等生命体征进行连续监测。除了有机发光二极管(OLED)显示屏和 ESP8266 微控制器外,该系统还包括血压、非接触式温度、SpO2 和心电图(ECG)传感器。利用可视化编程工具 Node-RED,可以收集、处理这些传感器的数据,并将其传输到谷歌云平台进行存档和可视化。这一过程包括将传感器和微控制器安装在一块特殊的印刷电路板上,并使用 EasyEDA 设计电路。该设备通过血压传感器测量收缩压、舒张压和脉搏,以及温度、心电图和 SpO2 值。系统的工作原理是使用三个按钮开关按需读取和显示这些值。收集到的数据同时显示在 OLED 上,并发送到 Node-RED 仪表板,然后再发送到谷歌电子表格进行存档和分析。这篇研究文章全面概述了健康监测系统、实施方式以及如何在实时环境中成功验证该系统。本研究对某些生命体征进行了检查,但还可以包括其他健康测量,如呼吸频率或血糖监测。机器学习算法也可用于预测分析。这将及早发现数据异常和趋势,改善医疗保健管理。
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Real-time Vital Signs Monitoring and Data Management Using a Low-Cost IoT-based Health Monitoring System
This study describes the creation and evaluation of a low-cost internet of things (IoT)-based health monitoring system for the continuous monitoring of vital signs such as temperature, pulse rate, oxygen saturation (SpO2) and blood pressure (BP) (both systolic and diastolic). Along with an organic light-emitting diode (OLED) display and an ESP8266 microcontroller, the system includes BP, non-contact temperature, SpO2 and electrocardiogram (ECG) sensors. Using the visual programming tool, Node-RED, the data from these sensors are gathered, processed and transmitted to the Google Cloud platform for archival and visualisation. The process involved mounting the sensors and microcontrollers on a special printed circuit board and designing the circuit with EasyEDA. The device measures systolic, diastolic and pulse rates from the BP sensor, as well as temperature, ECG and SpO2 values. The system works by using three push switches to read and display these values on demand. The gathered data are simultaneously shown on the OLED and sent to the Node-RED dashboard, where it is then sent to a Google Spreadsheet for archiving and analysis. This research article gives a thorough overview of the health monitoring system, the way it was implemented, and how it was successfully validated in a real-time setting. This study examines certain vital signs but additional health measures, such as respiration rate or glucose monitoring, could be included. Machine learning algorithms could also be used for predictive analytics. This would uncover data anomalies and trends early, improving healthcare management.
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来源期刊
Journal of Health Management
Journal of Health Management HEALTH POLICY & SERVICES-
CiteScore
3.40
自引率
0.00%
发文量
84
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