Wireless Communication Teaching and Research Office, School of Communication Engineering, Hangzhou Dianzi University, Hangzhou, China.
Key Laboratory of Vaccine, Prevention and Control of Infectious Disease of Zhejiang Province, Zhejiang Provincial Center for Disease Control and Prevention, Hangzhou, Zhejiang Province, China.
Methods Inf Med. 2022 Dec;61(5-06):155-166. doi: 10.1055/s-0042-1757185. Epub 2022 Nov 15.
Since COVID-19 (coronavirus disease 2019) was discovered in December 2019, it has spread worldwide. Early isolation and medical observation management of cases and their close contacts are the key to controlling the spread of the epidemic. However, traditional medical observation requires medical staff to measure body temperature and other vital signs face to face and record them manually. There is a general shortage of human and personal protective equipment and a high risk of occupational exposure, which seriously threaten the safety of medical staff.
We designed an intelligent crowd isolation medical observation management system framework based on the Internet of Things using wireless telemetry and big data cloud platform remote management technology. Through a smart wearable device with built-in sensors, vital sign data and geographical locations of medical observation subjects are collected and automatically uploaded to the big data monitoring platform on demand. According to the comprehensive analysis of the set threshold parameters, abnormal subjects are screened out, and activity tracking and health status monitoring for medical observation and management objectives are performed through monitoring and early warning management and post-event data traceability. In the trial of this system, the subjects wore the wristwatches designed in this study and real-time monitoring was conducted throughout the whole process. Additionally, for comparison, the traditional method was also used for these people. Medical staff came to measure their temperature twice a day. The subjects were 1,128 returned overseas Chinese from Europe.
Compared with the traditional vital sign detection method, the system designed in this study has the advantages of a fast response, low error, stability, and good endurance. It can monitor the temperature, pulse, blood pressure, and heart rate of the monitored subject in real time. The system designed in this study and the traditional vital sign detection method were both used to monitor 1,128 close contacts with COVID-19. There were six cases of abnormal body temperature that were missed by traditional manual temperature measurement in the morning and evening, and these six cases (0.53%) were sent to the hospital for further diagnosis. The abnormal body temperature of these six cases was not found in time when the medical staff came to check the temperature on a twice-a-day basis. The system designed in this study, however, can detect the abnormal body temperature of all these six people. The sensitivity and specificity of our system were both 100%.
The system designed in this study can monitor the body temperature, blood oxygen, blood pressure, heart rate, and geographical location of the monitoring subject in real time. It can be extended to COVID-19 medical observation isolation points, shelter hospitals, infectious disease wards, and nursing homes.
自 2019 年 12 月发现 COVID-19(新型冠状病毒病 2019)以来,该病毒已在全球范围内传播。对病例及其密切接触者进行早期隔离和医学观察管理是控制疫情传播的关键。然而,传统的医学观察需要医护人员面对面测量体温和其他生命体征,并手动记录。目前普遍存在人力资源和个人防护设备短缺以及职业暴露风险高的问题,这严重威胁着医护人员的安全。
我们设计了一种基于物联网的智能人群隔离医学观察管理系统框架,该框架使用无线遥测和大数据云平台远程管理技术。通过内置传感器的智能可穿戴设备,收集医学观察对象的生命体征数据和地理位置,并根据需求自动上传到大数据监控平台。根据设定的阈值参数的综合分析,筛选出异常对象,并通过监测和预警管理以及事后数据可追溯性对医学观察和管理目标进行活动跟踪和健康状况监测。在该系统的试验中,受试者全程佩戴本研究设计的手表进行实时监测。此外,还使用传统方法对这些人进行了比较。医护人员每天来测量两次体温。受试者是从欧洲返回的 1128 名海外华人。
与传统生命体征检测方法相比,本研究设计的系统具有响应速度快、误差低、稳定性好、耐力强的优点。它可以实时监测被监测对象的体温、脉搏、血压和心率。本研究设计的系统和传统的生命体征检测方法均用于监测 1128 名与 COVID-19 有密切接触的人。传统的早晚人工测温漏报了 6 例体温异常,这 6 例(0.53%)被送往医院进一步诊断。医护人员每天来测两次体温时,没有及时发现这 6 例体温异常。而本研究设计的系统可以检测到这 6 个人的体温异常。本系统的灵敏度和特异性均为 100%。
本研究设计的系统可以实时监测监测对象的体温、血氧、血压、心率和地理位置。它可以扩展到 COVID-19 医学观察隔离点、收容医院、传染病病房和养老院。