IEEE J Biomed Health Inform. 2023 May;27(5):2296-2305. doi: 10.1109/JBHI.2021.3120890. Epub 2023 May 4.
With the dramatic progress of wearable devices, continuous collection of single lead ECG wave is able to be implemented in a comfortable fashion. Data mining on single lead ECG wave is therefore attracting increasing attention, where atrial fibrillation (AF) detection is a hot topic. In this paper, we propose a dual-channel neural network for AF detection from a single lead ECG wave. Two primary phases are included, the data preprocessing part followed by a dual-channel neural network. A two-stage denoising procedure is developed for data preprocessing, so as to tackle the high noise and disturbance which generally resides in the ECG wave collected by wearable devices. Then the time-frequency spectrum and Poincare plot of the denoised ECG signal are imported into the developed dual-channel neural network for feature extraction and AF detection. On the 2017 PhysioNet/CinC Challenge database, the F1 values were 0.83, 0.90, and 0.75 for AF rhythm and normal rhythm, and other rhythm, respectively. The results well validate the effectiveness of the proposed method for AF detection from a single lead ECG wave, and also indicate its performance advantages over some state-of-the-art counterparts.
随着可穿戴设备的飞速发展,以舒适的方式连续采集单导联心电图波成为可能。因此,对单导联心电图波的数据挖掘越来越受到关注,其中房颤(AF)检测是一个热门话题。在本文中,我们提出了一种用于从单导联心电图波中检测 AF 的双通道神经网络。该方法包括两个主要阶段,数据预处理部分和双通道神经网络。我们开发了一种两阶段的去噪程序来进行数据预处理,以解决通常存在于可穿戴设备采集的心电图波中的高噪声和干扰问题。然后,将去噪后的心电图信号的时频谱和 Poincaré 图导入到所开发的双通道神经网络中,以进行特征提取和 AF 检测。在 2017 年 PhysioNet/CinC 挑战赛数据库上,AF 节律和正常节律以及其他节律的 F1 值分别为 0.83、0.90 和 0.75。结果很好地验证了该方法用于从单导联心电图波中检测 AF 的有效性,并且还表明其性能优于一些最新的同类方法。