MRehab:评估中风和心脏康复运动的多模式数据采集和建模框架

Md Abdullah Khan, H. Shahriar
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引用次数: 0

摘要

由于不习惯的环境、不规律的睡眠和正在进行的康复训练,中风后的康复总是在家庭环境中压力很大。通常,运动的强度和难度是患者日常管理的固有复杂问题。身体康复对所有脑卒中患者的康复至关重要。因此,为患者和治疗师提供反馈支持的自动化家庭康复系统可以帮助中风后患者管理和评估日常运动,以更快地恢复。这项工作提出了一个名为“MRehab”的数据采集和分析框架,该框架有助于在患者进行自愿和非自愿(规定)锻炼时收集多模态传感器信号。“MRe-hab”通过信号处理和多种机器学习模型来评估患者的运动和生理状态。该框架监测重复、患者疲劳和运动质量,并建议频率和强度。
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MRehab: Mutlimodal data acquisition and modeling framework for assessing stroke and cardiac rehabilitation exercises
Post-stroke rehabilitation is always stressful in-home settings due to the unaccustomed environment, irregular sleep, and undergoing rehabilitation exercises. Usually, the intensity and difficulty of the exercise are inherent complex problems for the patients to manage daily. Physical rehabilitation is essential for all stroke patients to recover. Therefore, an automated in-home rehabilitation system with feedback support both for patient and therapist could assist post-stroke patients in managing and assessing exercise daily to recover faster. This work proposes a data acquisition and analysis framework named “MRehab” that helps collect multimodal sensor signals while patients perform both voluntary and non-voluntary (prescribed) exercises. “MRe-hab” assesses the exercise and physiological states of the patients through signal processing and multiple machine learning models. This framework monitors repetition, patient fatigue, and exercise quality and recommends frequency and intensity.
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