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Comparative Study on Heart Rate Variability Analysis for Atrial Fibrillation Detection in Short Single-Lead ECG Recordings

机译:短单导ECG记录中心房颤动检测的心率变异性分析的比较研究

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Detection of atrial fibrillation (AFib) using wearable ECG monitors has recently gained popularity. The signal quality of such recordings is often much lower than that of traditional monitoring systems such as Holter monitors. Larger noise contamination can lead to reduced accuracy of the QRS detection which is the basis of the heart rate variability (HRV) analysis. Hence, it is crucial to accurately classify short ECG recording segments for AFib monitoring. A comparative study was conducted to investigate the applicability and performance of a variety of HRV feature extraction methods applied to short single lead ECG recordings to detect AFib. The data employed in this study is the publicly available dataset of the 2017 PhysioNet challenge. In particular, detection of AFib against non-AFib instances, including normal sinus rhythm, other types of arrhythmias and noisy signals, is investigated in this study. The HRV features can be divided into the categories of statistical, geometrical, frequency, entropy, Poincare plotand Lorentz plot-based. For feature selection, stepwise forward selection approach was employed and support vector machines with linear and radial basis function kernels were used for classification. The results indicate that a combination of features from all the categories leads to the highest accuracy levels. The feasibility of using different HRV features for short signals is discussed as well. In conclusion, AFib can be detected with high accuracy using short single-lead ECG signals using HRV features.
机译:最近,使用可穿戴式ECG监护仪检测房颤(AFib)的方法越来越普及。此类记录的信号质量通常远低于传统的监测系统(如Holter监测器)的信号质量。较大的噪声污染会导致QRS检测的准确性降低,这是心率变异性(HRV)分析的基础。因此,对AFib监测的短心电图记录段进行准确分类至关重要。进行了一项比较研究,以研究适用于短单导联ECG记录以检测AFib的各种HRV特征提取方法的适用性和性能。本研究中使用的数据是2017年PhysioNet挑战的公开数据集。尤其是,本研究调查了针对非AFib实例(包括正常窦性心律,其他类型的心律不齐和嘈杂信号)的AFib检测。 HRV的功能可分为基于统计,几何,频率,熵,庞加莱图和洛伦兹图的类别。对于特征选择,采用逐步前向选择方法,并使用具有线性和径向基函数核的支持向量机进行分类。结果表明,来自所有类别的特征的组合导致了最高的准确性级别。还讨论了对短信号使用不同的HRV特征的可行性。总之,使用HRV功能的短单导联ECG信号可以高精度检测AFib。

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