Application of a Wearable Physiological Monitoring System in Pulmonary Respiratory Rehabilitation Research

Desen Cao, Zhengbo Zhang, Hong Liang, Xiaoli Liu, Yingjia She, Yuzhu Li, Deyu Li, Mengsun Yu
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引用次数: 1

Abstract

Pulmonary rehabilitation has been demonstrated as a highly effective and safe treatment for improving health-related quality of life and reducing hospital admissions mortality in chronic obstructive pulmonary disease (COPD) patients. Despite significant progress within the physiological monitoring device industry, the widespread integration of wearable systems into medical practice remains limited. In this paper, we present a medical-grade wearable multi-sensor system to acquire COPD patients' vital signs and assist in pulmonary respiratory rehabilitation. Currently, 4 areas in this field were explored: breathing pattern analysis, respiratory exercises training, six minute walk test and inpatient 24-hours physiological monitoring. Totally 130 subjects enrolled in this study. The results show that this system can acquire cardiopulmonary physiological signals unobtrusively and accurately, and provide useful information for pulmonary respiratory rehabilitation. The next step for this work is to collect more physiological data from COPD patients during respiratory training exercises and generate individualized guideline and therapy for pulmonary respiratory rehabilitation.
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可穿戴生理监测系统在肺呼吸康复研究中的应用
肺部康复已被证明是一种非常有效和安全的治疗方法,可改善慢性阻塞性肺疾病(COPD)患者与健康相关的生活质量并降低住院死亡率。尽管生理监测设备行业取得了重大进展,但可穿戴系统在医疗实践中的广泛集成仍然有限。在本文中,我们提出了一种医疗级可穿戴多传感器系统,用于获取COPD患者的生命体征并辅助肺呼吸康复。目前在该领域探索了4个方面:呼吸模式分析、呼吸运动训练、6分钟步行测试和住院患者24小时生理监测。本研究共纳入130名受试者。结果表明,该系统能较好地获取肺生理信号,为肺呼吸康复提供有用的信息。这项工作的下一步是收集更多COPD患者在呼吸训练运动中的生理数据,并为肺呼吸康复制定个性化的指南和治疗方法。
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