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首页> 外文期刊>Multimedia Tools and Applications >PhysioLab - a multivariate physiological computing toolbox for ECG, EMG and EDA signals: a case of study of cardiorespiratory fitness assessment in the elderly population
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PhysioLab - a multivariate physiological computing toolbox for ECG, EMG and EDA signals: a case of study of cardiorespiratory fitness assessment in the elderly population

机译:PhysioLab-用于ECG,EMG和EDA信号的多元生理计算工具箱:在老年人群中进行心肺健康评估的案例

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The exponential increase of wearable health-tracking technologies offers new possibilities but also poses new challenges in signal processing to enable fitness monitoring through multimodal physiological recordings. Although there are several software tools used for postprocessing in physiological computing applications, limitations in the analysis, incorporating signals from multiple sources, integrating contextual information and providing information visualization tools prevent a widespread use of this technology. To address these issues, we introduce PhysioLab, a multimodal processing Matlab tool for the data analysis of Electromyography (EMG), Electrocardiography (ECG) and Electrodermal Activity (EDA). The software is intended to facilitate the processing and comprehension of multimodal physiological data with the aim of assessing fitness in several domains. A unique feature of PhysioLab is that is informed by nonnative data grouped by age and sex, allowing contextualization of data based on users' demographics. Besides signal processing, PhysioLab includes a novel approach to multivariable data visualization with the aim of simplifying interpretation by non-experts users. The system computes a set of ECG features based on heart rate variability analysis, EMG parameters to quantify force and fatigue levels, and galvanic skin level/responses from EDA signals. Furthermore, PhysioLab provides compatibility with data from multiple low-cost wearable sensors. We conducted an experiment with 17 community-dwelling older adults (64.5 +/- 6.4) to assess the feasibility of the tool in characterizing cardiorespiratory profiles during physical activity. Correlation analyses and regression models showed significant interactions between physiology and fitness evaluations. Our results suggest novel ways that physiological parameters could be effectively used to complement traditional fitness assessment.
机译:可穿戴式健康跟踪技术的指数级增长提供了新的可能性,但在信号处理方面也提出了新的挑战,以通过多模式生理记录进行健康监测。尽管在生理计算应用程序中有几种用于后处理的软件工具,但是分析的局限性,合并来自多个源的信号,集成上下文信息以及提供信息可视化工具阻碍了该技术的广泛使用。为了解决这些问题,我们引入了PhysioLab,这是一种多模式处理Matlab工具,用于进行肌电图(EMG),心电图(ECG)和皮肤电活动(EDA)的数据分析。该软件旨在促进多模式生理数据的处理和理解,旨在评估多个领域的适用性。 PhysioLab的独特功能是根据按年龄和性别分组的非本地数据提供信息,从而可以根据用户的人口统计学对数据进行上下文化。除信号处理外,PhysioLab还包括一种用于多变量数据可视化的新颖方法,旨在简化非专家用户的解释。该系统基于心率变异性分析,用于量化力和疲劳水平的EMG参数以及EDA信号的皮肤电水平/响应来计算一组ECG功能。此外,PhysioLab还与来自多个低成本可穿戴传感器的数据兼容。我们对17位社区居住的老年人(64.5 +/- 6.4)进行了一项实验,以评估该工具在体育锻炼过程中表征心肺功能的可行性。相关分析和回归模型显示了生理学和适应性评估之间的显着相互作用。我们的研究结果提出了可以有效地利用生理参数来补充传统健康评估的新颖方法。

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