Bashar Syed Khairul, Walkey Allan J, McManus David D, Chon Ki H
University of Connecticut, Storrs, CT, USA.
Department of Medicine, Boston University School of Medicine, Boston, MA, USA.
IEEE Access. 2019;7:13856-13866. doi: 10.1109/ACCESS.2019.2894092. Epub 2019 Jan 21.
We have developed a novel method to accurately detect QRS complex peaks using the variable frequency complex demodulation (VFCDM) method. The approach's novelty stems from reconstructing an ECG signal using only the frequency components associated with the QRS waveforms by VFCDM decomposition. After signal reconstruction, both top and bottom sides of the signal are used for peak detection, after which we compare locations of the peaks detected from both sides to ensure false peaks are minimized. Finally, we impose position-dependent adaptive thresholds to remove any remaining false peaks from the prior step. We applied the proposed method to the widely benchmarked MIT-BIH arrhythmia dataset, and obtained among the best results compared to many of the recently published methods. Our approach resulted in 99.94% sensitivity, 99.95% positive predictive value and a 0.11% detection error rate. Three other datasets-the MIMIC III database, University of Massachusetts atrial fibrillation data, and SCUBA diving in salt water ECG data-were used to further test the robustness of our proposed algorithm. For all these three datasets, our method retained consistently higher accuracy when compared to the BioSig Matlab toolbox, which is publicly available and known to be reliable for ECG peak detection.
我们开发了一种使用可变频率复解调(VFCDM)方法精确检测QRS波峰的新方法。该方法的新颖之处在于通过VFCDM分解仅使用与QRS波形相关的频率分量来重建心电图信号。信号重建后,信号的顶部和底部都用于峰值检测,之后我们比较从两侧检测到的峰值位置,以确保将假峰最小化。最后,我们施加位置相关的自适应阈值以去除上一步中任何剩余的假峰。我们将所提出的方法应用于广泛使用的基准MIT-BIH心律失常数据集,并与许多最近发表的方法相比获得了最佳结果之一。我们的方法灵敏度为99.94%,阳性预测值为99.95%,检测错误率为0.11%。另外三个数据集——MIMIC III数据库、马萨诸塞大学房颤数据和盐水潜水心电图数据——被用于进一步测试我们提出的算法的稳健性。对于所有这三个数据集,与公开可用且已知对心电图峰值检测可靠的BioSig Matlab工具箱相比,我们的方法始终保持更高的准确性。