Wavelet-Based ECG Delineation on a Wearable Embedded Sensor Platform

N. Boichat, N. Khaled, F. Rincón, David Atienza Alonso
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引用次数: 40

Abstract

The analysis of the electrocardiogram (ECG) is widely used for diagnosing many cardiac diseases. Since most of the clinically useful information in the ECG is found in characteristic wave peaks and boundaries, a significant amount of research effort has been devoted to the development of accurate and robust algorithms for automatic detection of the major ECG characteristic waves (i.e., the QRS complex, P and T waves), so-called ECG wave delineation. One of the most salient ECG wave delineation algorithms is based on the wavelet transform (WT). This work is dedicated to the sensible optimization and porting of this WT-based ECG wave delineator to an actual wearable embedded sensor platform with limited processing and storage resources. The porting was successful and the implementation was extensively validated using a standard manually annotated database. Interestingly, our results show that, despite the limitations of the embedded sensor platform, careful optimization allows to achieve comparable or even better delineation results than the original offline algorithm.
基于小波的可穿戴嵌入式传感器心电圈定
心电图分析被广泛应用于许多心脏疾病的诊断。由于心电图中大多数临床有用的信息都是在特征波峰和边界中发现的,因此大量的研究工作一直致力于开发准确而稳健的算法来自动检测主要的心电图特征波(即QRS复波,P波和T波),即所谓的心电波描绘。基于小波变换(WT)的心电波描绘算法是目前最突出的心电波描绘算法之一。这项工作致力于对这种基于wt的心电波描绘器进行合理优化,并将其移植到实际的可穿戴嵌入式传感器平台上,该平台的处理和存储资源有限。移植是成功的,并且使用标准的手动注释数据库对实现进行了广泛的验证。有趣的是,我们的研究结果表明,尽管嵌入式传感器平台存在局限性,但仔细优化可以实现与原始离线算法相当甚至更好的描绘结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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