IEEE Rev Biomed Eng. 2018;11:36-52. doi: 10.1109/RBME.2018.2810957. Epub 2018 Feb 28.
Electrocardiogram (ECG) signal quality assessment (SQA) plays a vital role in significantly improving the diagnostic accuracy and reliability of unsupervised ECG analysis systems. In practice, the ECG signal is often corrupted with different kinds of noises and artifacts. Therefore, numerous SQA methods were presented based on the ECG signal and/or noise features and the machine learning classifiers and/or heuristic decision rules. This paper presents an overview of current state-of-the-art SQA methods and highlights the practical limitations of the existing SQA methods. Based upon past and our studies, it is noticed that a lightweight ECG noise analysis framework is highly demanded for real-time detection, localization, and classification of single and combined ECG noises within the context of wearable ECG monitoring devices which are often resource constrained.
心电图(ECG)信号质量评估(SQA)在显著提高非监督式 ECG 分析系统的诊断准确性和可靠性方面起着至关重要的作用。在实际中,ECG 信号常常受到各种噪声和伪影的干扰。因此,基于 ECG 信号和/或噪声特征以及机器学习分类器和/或启发式决策规则,提出了许多 SQA 方法。本文概述了当前最先进的 SQA 方法,并强调了现有 SQA 方法的实际局限性。根据过去和我们的研究,我们注意到,对于可穿戴式 ECG 监测设备,需要一个轻量级的 ECG 噪声分析框架,以便在资源受限的情况下实时检测、定位和分类单一和混合 ECG 噪声。