Human breathing assessment using Electromyography signal of respiratory muscles

A. N. Norali, A. Abdullah, Z. Zakaria, N. A. Rahim, S. K. Nataraj
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引用次数: 3

Abstract

Breathing is one of the human physiological activities that catch the interest of researchers especially in the area of medical diagnosis and human physiological performance. Mostly, the measurement and data are in form of pressure and volume variables of air intake and outflow. However, using airflow pressure and volume require installment of certain sensor usually on subject's mouth which could discomfort the subject. Another possible method for assessing the breathing pattern is through human respiratory muscles, which are via electromyography signal. In this paper, experiment is done on acquiring the electromyography signal from four respiratory muscles namely sternocleidomastoid, scalene, intercostal muscle and diaphragm with subjects performing four different breathing tasks. Analysis-of-variance test has been done on the Electromyography (EMG) feature data of the four muscles for the four breathing tasks. Results of ANOVA analysis, show that the p-values has a significant different in the four breathing tasks for each muscle.
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利用呼吸肌肌电图信号评估人体呼吸
呼吸是人体生理活动之一,尤其在医学诊断和人体生理性能研究领域引起了人们的广泛关注。大多数情况下,测量和数据是以进气和出气的压力和体积变量的形式。然而,使用气流压力和体积通常需要在受试者的口腔上安装一定的传感器,这可能会使受试者感到不适。另一种评估呼吸模式的可能方法是通过人体呼吸肌,这是通过肌电图信号。本实验在受试者执行四种不同呼吸任务的情况下,对胸锁乳突肌、斜角肌、肋间肌和横膈膜四种呼吸肌的肌电信号进行了采集。对四种呼吸任务的肌电特征数据进行方差分析检验。方差分析的结果显示,p值在每个肌肉的四个呼吸任务中有显著差异。
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