Electrocardiographic Signal Quality Assessment Without Morphology Analysis

David Velez, A. Lourenco, João Costa
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Abstract

The electrocardiogram (ECG) is the primary screening method of the cardiologist and is fundamental to understand the electrical activity of the heart. Signal interference sources that are non-issues in medical recordings become significant sources of noise in wearable devices recordings using dry electrodes. It is crucial to develop methods to assess recording quality in order to minimize unreliable data and provide cleaner raw recordings to algorithms such as machine learning. In this paper a methodology for classification of the most common signal distortion sources affecting dry electrodes ECG recordings is presented; classification is not reliant on absolute signal analysis and ECG morphology, making it suitable for applications where the system cannot directly analyze the ECG due to regulatory restrictions. The methodology was successfully validated with a commonly used dataset - Computing in Cardiology Challenge 2011 - as well as with data obtained in real driving conditions using the CardioWheel system [1].
无形态学分析的心电图信号质量评估
心电图(ECG)是心脏病专家的主要筛查方法,是了解心脏电活动的基础。在医疗记录中不存在问题的信号干扰源在使用干电极的可穿戴设备记录中成为重要的噪声源。为了最大限度地减少不可靠的数据,并为机器学习等算法提供更清晰的原始记录,开发评估记录质量的方法至关重要。本文提出了一种对影响干电极心电图记录的最常见信号失真源进行分类的方法;分类不依赖于绝对信号分析和心电形态,适用于由于监管限制而不能直接分析心电的应用。该方法通过常用的数据集(2011年心脏病学挑战计算)以及使用CardioWheel系统在真实驾驶条件下获得的数据成功验证[1]。
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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