Department of Electronics and Communication Engineering1, Dr B.R. Ambedkar National Institute of Technology, Jalandhar 144011, India.
Department of Electronics and Communication Engineering2, Dr B.R. Ambedkar National Institute of Technology, Jalandhar 144011, India.
Biomed Phys Eng Express. 2022 Sep 23;8(6). doi: 10.1088/2057-1976/ac8e70.
. Electrocardiogram (ECG) signal is a record of the electrical activity of the heart and contains important clinical data about cardiovascular-related misfunctioning. The goal of the present work is to develop an improved QRS detection algorithm for the detection of heart abnormalities.. In this present work stationary wavelet transforms (SWT) based method has been proposed for precise detection of QRS complex with 'sym2' mother wavelet. The stationary wavelet transform is a systematic mathematical tool to decompose the signal without downsampling using scale analysis and provides high detection of QRS complex and accurate localization of signal components. In the proposed method four level of decomposition is applied and the initial thresholding value is computed by the maximum amplitude of scale one at level four in SWT coefficients without the zero-crossing amplitude detection method. The multi-layered dynamic thresholding method has been applied to detect the true R-peak values and locate the QRS complex in the ECG signal.. For evaluation of results, the presented methodology is assessed on MIT-BIH, QTDB, and Noise stress test databases. In MIT-BIH, the sensitivity = 99.88%, positive predictivity = 99.93%, accuracy = 99.80% and detection error rate = 0.18% is achieved. In NSTD database, sensitivity = 97.46%, positive predictivity = 94.20%, accuracy = 91.95% and detection error rate = 8.47% and in QTDB, sensitivity = 99.95%, positive predictivity = 99.90%, accuracy = 99.71% and detection error rate = 0.16% is executed.. In the presented proposed methodology, the computation complexity is low and exhibits a simple technique rather than an empirical approach. The proposed technique corroborates the performance for the detection of QRS complex with improved accuracy.
心电图(ECG)信号是心脏电活动的记录,包含有关心血管相关功能障碍的重要临床数据。本工作的目的是开发一种改进的 QRS 检测算法,用于检测心脏异常。
在本工作中,提出了一种基于平稳小波变换(SWT)的方法,使用“sym2”母小波精确检测 QRS 复合波。平稳小波变换是一种系统的数学工具,可在不进行下采样的情况下使用尺度分析对信号进行分解,并提供 QRS 复合波的高检测和信号分量的精确定位。在提出的方法中,应用了四级分解,初始阈值通过 SWT 系数中四级的第一尺度的最大幅值计算,而无需使用零交叉幅度检测方法。多层动态阈值法已应用于检测真实 R 峰值并定位 ECG 信号中的 QRS 复合波。
为了评估结果,该方法在 MIT-BIH、QTDB 和噪声应激测试数据库上进行了评估。在 MIT-BIH 中,灵敏度为 99.88%,正预测值为 99.93%,准确性为 99.80%,检测错误率为 0.18%。在 NSTD 数据库中,灵敏度为 97.46%,正预测值为 94.20%,准确性为 91.95%,检测错误率为 8.47%,在 QTDB 中,灵敏度为 99.95%,正预测值为 99.90%,准确性为 99.71%,检测错误率为 0.16%。
在提出的方法中,计算复杂度低,表现出简单的技术而不是经验方法。所提出的技术通过提高准确性来验证 QRS 复合波检测的性能。