结合 IoMT 和 XAI 增强分诊优化:MQTT 经纪人方法与情境建议用于改进医疗保健中的患者优先级管理

O. Stitini, Fathia Ouakasse, Said Rakrak, S. Kaloun, Omar Bencharef
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引用次数: 0

摘要

物联网的广泛应用极大地改善了我们各方面的日常生活。电子医疗从物联网(IoT)的进步中受益匪浅,尤其是随着医疗物联网(IoMT)的出现。复杂的无线传感器网络会产生大量数据,需要强大的云端硬件进行精确处理和分类。IoMT 可以广泛收集医院病人的医疗数据,实现对生命体征和健康状况的实时监控。然而,由于数据的重要性和复杂性,在紧急情况下有效地对病人进行优先排序具有挑战性。为解决这一问题,一种创新的解决方案是将可解释人工智能集成到 IoMT 生态系统中。通过集成可解释人工智能,该系统增强了可解释性,在患者优先级排序方面提高了信任度和可靠性。这为医疗服务提供者提供了一个更可靠的优先级机制,与既定的医疗指南保持一致。本研究探讨了用于收集入院患者医疗数据的物联网医疗设备,重点关注轻量级设备的 MQTT 协议,旨在通过物联网医疗数据分析,引导患者前往正确的科室,并确定急诊管理的优先级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining IoMT and XAI for Enhanced Triage Optimization: An MQTT Broker Approach with Contextual Recommendations for Improved Patient Priority Management in Healthcare
The widespread adoption of the Internet of Things has significantly enhanced our daily lives across various dimensions. E-health has significantly benefited from advancements in the Internet of Things (IoT), particularly with the emergence of the Internet of Medical Things (IoMT). A sophisticated wireless sensor network produces a huge amount of data, requiring robust cloud-based hardware for precise processing and categorization. The IoMT allows for the extensive gathering of medical data from incoming hospital patients, enabling real-time monitoring of vital signs and health statuses. Nevertheless, effectively prioritizing patients in emergencies is challenging due to the importance and complicatedness of the data. To tackle this issue, an innovative solution involves integrating Explainable Artificial Intelligence into the IoMT ecosystem. By incorporating Explainable AI, the system enhances explainability, fostering trust and reliability in patient prioritization. This provides healthcare providers a more reliable prioritization mechanism that aligns with established medical guidelines. The study explores IoMT devices for collecting medical data from incoming patients, focusing on the MQTT protocol for lightweight devices, aiming to guide patients to the right department and prioritize emergency management through IoMT data analysis.
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