[Exploration of remote management and an intelligent platform for in-hospital respiratory therapy].

H Q Ge, Q Pan
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Abstract

The construction of an intelligent remote management platform for respiratory therapy, utilizing artificial intelligence (AI) and the electronic medical record system (EMR), has significant potential to improve the management of respiratory therapy in critically ill patients. This platform includes the development of a dedicated respiratory therapy EMR, the integration of data from multiple mechanical ventilators from different vendors and models, and the utilization of AI-assisted analysis to understand the pathophysiology of respiratory diseases and the complex physiological factors that influence specific interventions, thereby supporting diagnosis, treatment guidance, and prognosis prediction. In addtion, a network will be established to provide seamless connectivity between hospitals and wards. The resulting platform enables the collection of medical device data from multiple points within the hospital, real-time data analysis, and timely alarms, thereby facilitating remote data access, centralization of information, and standardization of data. As a result, the platform enables efficient intra-hospital and inter-hospital doctor-patient management. Despite the benefits offered by this platform, certain challenges need to be addressed, including ensuring data privacy and security, as well as managing the financial and human resources required for its implementation and maintenance. Furthermore, continuous optimization of the platform is crucial, and the clinical use of the platform requires appropriate professional training.

[院内呼吸治疗远程管理与智能平台探索]。
利用人工智能(AI)和电子病历系统(EMR)构建呼吸治疗智能远程管理平台,对改善危重患者呼吸治疗管理具有重要潜力。该平台包括开发专用的呼吸治疗EMR,整合来自不同供应商和型号的多个机械呼吸机的数据,并利用ai辅助分析了解呼吸系统疾病的病理生理和影响特定干预的复杂生理因素,从而支持诊断,治疗指导和预后预测。此外,还将建立一个网络,在医院和病房之间提供无缝连接。由此形成的平台可实现医院内多点医疗设备数据采集、数据实时分析、及时报警等功能,实现数据远程访问、信息集中化、数据标准化。因此,该平台实现了高效的医院内和医院间医患管理。尽管该平台带来了诸多好处,但仍需要解决一些挑战,包括确保数据隐私和安全,以及管理其实施和维护所需的财务和人力资源。此外,平台的持续优化是至关重要的,并且平台的临床使用需要适当的专业培训。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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