首页> 外文期刊>Journal of electromyography and kinesiology: Official journal of the International Society of Electrophysiological Kinesiology >Use of accelerometers for automatic regional chest movement recognition during tidal breathing in healthy subjects
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Use of accelerometers for automatic regional chest movement recognition during tidal breathing in healthy subjects

机译:在健康受试者中潮汐呼吸过程中使用加速度计自动区域胸部运动识别

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摘要

Recognition of breathing patterns helps clinicians to understand acute and chronic adaptations during exercise and pathological conditions. Wearable technologies combined with a proper data analysis provide a low cost option to monitor chest and abdominal wall movements. Here we set out to determine the feasibility of using accelerometry and machine learning to detect chest-abdominal wall movement patterns during tidal breathing. Furthermore, we determined the accelerometer positions included in the clusters, considering principal component domains. Eleven healthy participants (age: 21 +/- 0.2 y, BMI: 23.4 +/- 0.7 kg/m(2), FEV1: 4.1 +/- 0.3 L, VO2: 4.6 +/- 0.2 mL/min kg) were included in this cross-sectional study. Spirometry and ergospirometry assessments were performed with participants seated with 13 accelerometers placed over the thorax. Data collection lasted 10 min. Following signal pre-processing, principal components and clustering analyses were performed. The Euclidean distances in respect to centroids were compared between the clusters (p < 0.05), identifying two clusters (p < 0.001). The first cluster included sensors located at the right and left second rib midline, body of sternum, left fourth rib midline, right and left second thoracic vertebra midline, and fifth thoracic vertebra. The second cluster included sensors at the fourth right rib midline, right and left seventh ribs, abdomen at linea alba, and right and left tenth thoracic vertebra midline. Costal-superior and costal-abdominal patterns were also recognized. We conclude that accelerometers placed on the chest and abdominal wall permit the identification of two clusters of movements regarding respiration biomechanics.
机译:呼吸模式的识别有助于临床医生在运动和病理条件下了解急性和慢性适应。可穿戴技术与适当的数据分析相结合,提供了监测胸部和腹壁运动的低成本选项。在这里,我们开始确定使用加速度和机器学习的可行性,以在潮汐呼吸期间检测胸部壁运动模式。此外,考虑主组件域,我们确定了包括在群集中的加速度计位置。 11(年龄)在这种横断面研究中。肺活量测定和Ergospirometry评估与坐在胸腔上的13个加速度计中的参与者进行。数据收集持续了10分钟。在信号预处理之后,执行主成分和聚类分析。在簇(P <0.05)之间比较了对质心的欧几里德距离(P <0.05),鉴定两个簇(P <0.001)。第一簇包括位于右侧和左二肋骨中线,胸骨体,左四肋骨中线,右侧和左二次胸椎中线的传感器,以及第五个胸椎椎骨。第二簇包括第四右肋骨中线,右侧和左肋骨,腹部腹部的传感器,右侧,左右十分之一胸椎。还认识到肋骨上优越,腹部模式。我们得出结论,放置在胸壁和腹壁上的加速度计允许鉴定有关呼吸生物力学的两种运动。

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