论文标题

超长期ECG记录的自适应QRS检测算法

An Adaptive QRS Detection Algorithm for Ultra-Long-Term ECG Recordings

论文作者

Malik, John, Soliman, Elsayed Z, Wu, Hau-Tieng

论文摘要

背景:在移动期间,超长期ECG监测过程中的QRS复合物的准确检测受到高心率,信号振幅的急剧变化和持续变化的挑战,以及由于受试者运动,背景噪声和ECG电极错位而引起的信号质量的间歇变形。目的:我们提出了一种修订的QRS检测算法,该算法解决上述挑战。方法和结果:我们提出的算法基于应用两个关键修改后的最新算法。第一个修改是实现信号振幅的局部估计。第二个修改是一种机制,算法会适应心率变化。我们使用了Phancionet上11个注释的数据库以及四个超长(14天)ECG记录的短期ECG记录,验证了针对最先进算法的提议算法,这些算法是在中央ECG核心实验室中可见的。在超长期ECG记录的数据库中,我们提出的算法的灵敏度为99.90%,正预测值为99.73%。同时,最新的QRS检测算法的灵敏度为99.30%,在同一数据库上的阳性预测值为99.68%。我们的新算法的数值效率很明显,因为在大约157秒内分析了在200 Hz时进行的14天记录。结论:我们开发了一种新的QRS检测算法。我们算法的效率和准确性使其非常适合移动健康应用程序,超长期和病理心电图记录以及大型心电图数据库的批处理处理。

Background: Accurate detection of QRS complexes during mobile, ultra-long-term ECG monitoring is challenged by instances of high heart rate, dramatic and persistent changes in signal amplitude, and intermittent deformations in signal quality that arise due to subject motion, background noise, and misplacement of the ECG electrodes. Purpose: We propose a revised QRS detection algorithm which addresses the above-mentioned challenges. Methods and Results: Our proposed algorithm is based on a state-of-the-art algorithm after applying two key modifications. The first modification is implementing local estimates for the amplitude of the signal. The second modification is a mechanism by which the algorithm becomes adaptive to changes in heart rate. We validated our proposed algorithm against the state-of-the-art algorithm using short-term ECG recordings from eleven annotated databases available at Physionet, as well as four ultra-long-term (14-day) ECG recordings which were visually annotated at a central ECG core laboratory. On the database of ultra-long-term ECG recordings, our proposed algorithm showed a sensitivity of 99.90% and a positive predictive value of 99.73%. Meanwhile, the state-of-the-art QRS detection algorithm achieved a sensitivity of 99.30% and a positive predictive value of 99.68% on the same database. The numerical efficiency of our new algorithm was evident, as a 14-day recording sampled at 200 Hz was analyzed in approximately 157 seconds. Conclusions: We developed a new QRS detection algorithm. The efficiency and accuracy of our algorithm makes it a good fit for mobile health applications, ultra-long-term and pathological ECG recordings, and the batch processing of large ECG databases.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源