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用于动态心脏监测的身体运动活动识别

Body movement activity recognition for ambulatory cardiac monitoring.

作者信息

Pawar Tanmay, Chaudhuri Subhasis, Duttagupta Siddhartha P

机构信息

Department of Electrical Engineering, Indian Institute of Technology-Bombay, Mumbai 400076, India.

出版信息

IEEE Trans Biomed Eng. 2007 May;54(5):874-82. doi: 10.1109/TBME.2006.889186.

Abstract

Wearable electrocardiogram (W-ECG) recorders are increasingly in use by people suffering from cardiac abnormalities who also choose to lead an active lifestyle. The challenge presently is that the ECG signal is influenced by motion artifacts induced by body movement activity (BMA) of the wearer. The usual practice is to develop effective filtering algorithms which will eliminate artifacts. Instead, our goal is to detect the motion artifacts and classify the type of BMA from the ECG signal itself. We have recorded the ECG signals during specified BMAs, e.g., sitting still, walking, movements of arms and climbing stairs, etc. with a single-lead system. The collected ECG signal during BMA is presumed to be an additive mix of signals due to cardiac activities, motion artifacts and sensor noise. A particular class of BMA is characterized by applying eigen decomposition on the corresponding ECG data. The classification accuracies range from 70% to 98% for various class combinations of BMAs depending on their uniqueness based on this technique. The above classification is also useful for analysis of P and T waves in the presence of BMA.

摘要

患有心脏异常但又选择积极生活方式的人越来越多地使用可穿戴心电图(W-ECG)记录仪。目前面临的挑战是,心电图信号会受到佩戴者身体运动活动(BMA)所诱发的运动伪影的影响。通常的做法是开发有效的滤波算法来消除伪影。相反,我们的目标是从心电图信号本身检测运动伪影并对BMA的类型进行分类。我们使用单导联系统记录了在特定BMA(如静坐、行走、手臂运动和爬楼梯等)期间的心电图信号。在BMA期间收集的心电图信号被假定为心脏活动、运动伪影和传感器噪声所产生信号的叠加混合。通过对相应的心电图数据应用特征分解来表征一类特定的BMA。基于该技术,根据BMA各种类别组合的独特性,分类准确率在70%至98%之间。上述分类对于在存在BMA的情况下分析P波和T波也很有用。

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