Development and research of a remote patient monitoring system

Gulnur Tyulepberdinova, Murat Kunelbayev, Madina Mansurova, G. Amirkhanova, Zhanar Oralbekova
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Abstract

This paper presents an architecture design for a patient monitoring system integrated with Internet of Things (IoT) technology to detect and quantify patient stress levels. Research in remote patient prediction systems is considered one of the most important areas at present. This technology offers the potential to improve stress assessment, provide interventional treatment, and provide personalized stress management techniques. A Raspberry Pi microcontroller was used as a key controller. The unit is equipped with electroencephalography sensors, electrocardiogram sensors, glucose sensors, and electromyography sensors to record physiological signals indicative of stress, such as cardiac activity and human brain activity, a method for monitoring blood glucose levels in diabetic patients and measuring electrical activity. Muscles are collected from these four sensors and transmit information via communication channels (Wi-Fi, USB). The information obtained is transferred to a storage database, where patient data is securely stored. In the storage database, interaction between the patient and the doctor occurs via a 4G communication channel. Data is transmitted via a 4G communication channel from the storage database to the doctor’s personal computer. From the doctor’s personal computer, data is transferred to the doctor’s control panel, and from there the data is transferred to a web server, where all data is processed and the patient is monitored. In the course of research, it was found that the proposed device has 95% reliability in measuring cardiac activity and human brain activity, a method for monitoring blood glucose levels in patients with diabetes and measuring the electrical activity of muscles.
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开发和研究远程病人监测系统
本文介绍了一种与物联网(IoT)技术相结合的病人监测系统的架构设计,该系统可检测和量化病人的压力水平。远程患者预测系统的研究被认为是当前最重要的领域之一。这项技术为改善压力评估、提供介入治疗和个性化压力管理技术提供了可能。关键控制器使用的是 Raspberry Pi 微控制器。该装置配备了脑电图传感器、心电图传感器、血糖传感器和肌电图传感器,用于记录指示压力的生理信号,如心脏活动和人脑活动,这是一种监测糖尿病患者血糖水平和测量电活动的方法。通过这四个传感器收集肌肉信息,并通过通信渠道(Wi-Fi、USB)传输信息。获得的信息被传输到一个存储数据库,病人的数据被安全地存储在该数据库中。在存储数据库中,病人和医生之间通过 4G 通信渠道进行互动。数据通过 4G 通信通道从存储数据库传输到医生的个人电脑。数据从医生的个人电脑传输到医生的控制面板,再从控制面板传输到网络服务器,在网络服务器上处理所有数据并对病人进行监控。在研究过程中发现,拟议的设备在测量心脏活动和人脑活动、监测糖尿病患者血糖水平的方法以及测量肌肉电活动方面的可靠性达到 95%。
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