[Research and application implementation of the Internet of Things scheme for intensive care unit medical equipment].

Hong Liang, Jipeng Sun, Yong Fan, Desen Cao, Kunlun He, Zhengbo Zhang, Zhi Mao
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Abstract

The intensive care unit (ICU) is a highly equipment-intensive area with a wide variety of medical devices, and the accuracy and timeliness of medical equipment data collection are highly demanded. The integration of the Internet of Things (IoT) into ICU medical devices is of great significance for enhancing the quality of medical care and nursing, as well as for the advancement of digital and intelligent ICUs. This study focuses on the construction of the IOT for ICU medical devices and proposes innovative solutions, including the overall architecture design, devices connection, data collection, data standardization, platform construction and application implementation. The overall architecture was designed according to the perception layer, network layer, platform layer and application layer; three modes of device connection and data acquisition were proposed; data standardization based on Integrating the Healthcare Enterprise-Patient Care Device (IHE-PCD) was proposed. This study was practically verified in the Chinese People's Liberation Army General Hospital, a total of 122 devices in four ICU wards were connected to the IoT, storing 21.76 billion data items, with a data volume of 12.5 TB, which solved the problem of difficult systematic medical equipment data collection and data integration in ICUs. The remarkable results achieved proved the feasibility and reliability of this study. The research results of this paper provide a solution reference for the construction of hospital ICU IoT, offer more abundant data for medical big data analysis research, which can support the improvement of ICU medical services and promote the development of ICU to digitalization and intelligence.

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【重症监护医疗设备物联网方案的研究与应用实施】。
重症监护病房(ICU)是一个设备高度密集的领域,医疗设备种类繁多,对医疗设备数据采集的准确性和及时性要求很高。物联网(IoT)与ICU医疗器械的融合,对于提高医疗护理质量,推进数字化、智能化ICU的发展具有重要意义。本研究围绕ICU医疗设备物联网的构建,从整体架构设计、设备连接、数据采集、数据标准化、平台建设、应用实施等方面提出创新解决方案。按照感知层、网络层、平台层和应用层进行总体架构设计;提出了三种设备连接和数据采集模式;提出了基于医疗企业-患者护理设备(IHE-PCD)集成的数据标准化。本研究在中国人民解放军总医院进行了实践验证,4个ICU病房共122台设备接入物联网,存储数据217.6亿项,数据量12.5 TB,解决了ICU系统医疗设备数据采集和数据集成困难的问题。所取得的显著结果证明了本研究的可行性和可靠性。本文的研究成果为医院ICU物联网建设提供了解决方案参考,为医疗大数据分析研究提供了更丰富的数据,可以支持ICU医疗服务的提升,促进ICU向数字化、智能化发展。
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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
4868
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