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Non-invasive respiration and ventilation prediction using a single abdominal sensor belt

机译:使用单个腹部传感器带进行无创呼吸和通气预测

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On-line measurement of respiration plays an important role in monitoring human physical activities. Such measurement commonly employs sensing belts secured around the abdomen of the test object. This paper first presents a signal decomposition technique for tissue artifact removal from respiratory signals and respiratory signal reconstruction, based on the Empirical Mode Decomposition (EMD). Methods based on spectral analysis and multiple linear regressions were then developed to predict the respiration rate and minute ventilation, respectively. Performance of the algorithms was evaluated through real-life experiments of 105 subjects engaged in 14 types of physical activities. The predictions were compared to the criterion respiration measurements using a bidirectional digital volume transducer housed in a respiratory gas exchange system. Results have verified reasonably good performance of the algorithms and the applicability of the wearable sensing system for respiratory parameter prediction during physical activity.
机译:呼吸的在线测量在监测人类的身体活动中起着重要的作用。这种测量通常采用固定在测试对象腹部周围的传感带。本文首先介绍了一种基于经验模式分解(EMD)的信号分解技术,用于从呼吸信号中去除组织伪影并重建呼吸信号。然后开发了基于频谱分析和多元线性回归的方法来分别预测呼吸速率和分钟通气量。通过对参与14种体育活动的105名受试者进行的真实生活实验来评估算法的性能。使用安装在呼吸气体交换系统中的双向数字量传感器,将预测结果与标准呼吸测量结果进行了比较。结果证明了算法的合理良好性能,以及可穿戴传感系统在体育锻炼过程中用于呼吸参数预测的适用性。

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