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A Low-Complexity Model-Free Approach for Real-Time Cardiac Anomaly Detection Based on Singular Spectrum Analysis and Nonparametric Control Charts

机译:基于奇异频谱分析和非参数控制图的低复杂度实时心电异常检测方法

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While the importance of continuous monitoring of electrocardiographic (ECG) or photoplethysmographic (PPG) signals to detect cardiac anomalies is generally accepted in preventative medicine, there remain numerous challenges to its widespread adoption. Most notably, difficulties arise regarding crucial characteristics such as real-time capability, computational complexity, the amount of required training data, and the avoidance of too-restrictive modeling assumptions. We propose a lightweight and model-free approach for the online detection of cardiac anomalies such as ectopic beats in ECG or PPG signals on the basis of the change detection capabilities of singular spectrum analysis (SSA) and nonparametric rank-based cumulative sum (CUSUM) control charts. The procedure is able to quickly detect anomalies without requiring the identification of fiducial points such as R-peaks, and it is computationally significantly less demanding than previously proposed SSA-based approaches. Therefore, the proposed procedure is equally well suited for standalone use and as an add-on to complement existing (e.g., heart rate (HR) estimation) procedures.
机译:虽然预防医学通常接受持续监测心电图(ECG)或光体积描记图(PPG)信号以检测心脏异常的重要性,但其广泛采用仍面临许多挑战。最值得注意的是,在关键特性(例如实时能力,计算复杂性,所需训练数据的数量以及避免过于严格的建模假设)方面出现了困难。我们基于奇异频谱分析(SSA)和基于非参数秩的累积和(CUSUM)的变化检测功能,提出了一种轻量级且无模型的方法来在线检测心脏异常,例如ECG或PPG信号中的异位搏动控制图。该程序能够快速检测异常,而无需识别基准点(例如R峰),并且计算上的要求比以前提出的基于SSA的方法要低得多。因此,提出的程序同样非常适合独立使用,并作为对现有程序(例如,心率(HR)估计)的补充。

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