一种传感器管理与患者诊断的新方法与试验台

IF 1.3 Q4 ENGINEERING, BIOMEDICAL Medical Devices-Evidence and Research Pub Date : 2007-06-25 DOI:10.1109/HCMDSS-MDPNP.2007.14
Winston H. Wu, M. Batalin, W. Kaiser, M. Sarrafzadeh, A. Bui
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引用次数: 0

摘要

低成本的传感器和无线系统现在可以在家庭、工作场所和传统的护理点环境中创造持续警惕和无处不在的监控能力。虽然该领域在传感器技术、移动计算平台和数据传输方面正在取得进展,但大规模应用的障碍仍然存在,特别是在患者疾病诊断领域,这通常需要一套不同的传感器和仪器,在适当的时候应用,以响应患者的状态/行为。由于这些传感器可能数量众多,并且可能不会在任何时候都穿着舒适和实用,因此需要在使用点系统选择传感器的解决方案。我们描述了增量诊断方法(IDM)系统,这是一个基于贝叶斯统计和决策分析理论的嵌入式决策支持系统,用于选择或取消选择可用的传感器,以便在最大限度地减少患者身上使用的传感器集的同时,最大限度地提高患者病情的诊断确定性。IDM已经在基于标准的、无处不在的无线平台的个性化医疗嵌入式设备(MEDIC)系统测试平台上进行了评估。MEDIC支持本地传感和信号处理、自主决策支持以及可穿戴组件的远程重新配置和控制。本文还详细评价了IDM的操作和患者步态分析的性能。最后,我们还讨论了IDM提供的许多新机会以及该能力引入的相关未来研究。
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A Novel Method and Testbed for Sensor Management and Patient Diagnosis
Low-cost sensors and wireless systems can now create a constantly vigilant and pervasive monitoring capability at home, at work, and in conventional point-of-care environments. While progress in this area is underway in sensor technology, mobile computing platforms, and data transport, barriers to large scale application remain ahead, particularly in the area of patient disease diagnosis, which generally requires a diverse set of sensors and instruments that are applied at proper times in response to patient state/behavior. As these sensors may be numerous, and may not be worn comfortably and practicably at all times, a solution is required for the systematic selection of sensors at the point of use. We describe the Incremental Diagnosis Method (IDM) system, an embedded decision support system based on Bayesian statistics and decision analysis theory developed to select or deselect available sensors so that the diagnostic certainty of patient condition best improved while the set of sensors used on the patient body is minimized. IDM has been evaluated in a testbed, the Medical Embedded Device for Individualized Care (MEDIC) system, based on standard, ubiquitous wireless platforms. MEDIC supports local sensing and signal processing, autonomous decision support, and remote reconfiguration and control of wearable components. A detailed evaluation of IDM operation and performance for patient gait analysis is also given in this paper. Finally, we also discuss the many new opportunities provided by IDM and the related future research introduced by this capability.
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来源期刊
Medical Devices-Evidence and Research
Medical Devices-Evidence and Research ENGINEERING, BIOMEDICAL-
CiteScore
2.80
自引率
0.00%
发文量
41
审稿时长
16 weeks
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