Wenjing Liu,Li Yan,Yangcheng Huang,Ziyi Yin,Mingjie Wang,Wenjie Cai
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引用次数: 0
摘要
目的 本文探讨了如何通过自动算法准确检测心电图(ECG)信号中的二度和三度房室传导阻滞(AVB)。在这一过程中,P 波检测不准确是一个难题。针对这一局限性,我们提出了一种可靠的方法,通过精确定位 P 波来显著提高 AVB 检测的性能。我们提出的 P 波网利用注意力机制来提取空间和时间特征,并采用 BiLSTM 模块来捕捉心电信号中的时际依赖性。为了克服二度和三度 AVB(2AVB,3AVB)数据稀缺的问题,我们采用了一种数学方法来合成伪数据。通过将 P-WaveNet识别的P波位置与RR间期节律和PR间期等关键医学特征相结合,我们建立了一种能够自动检测房室传导阻滞的分类规则。主要结果P-WaveNet在QTDB和LUDB数据集上的P波定位F1得分率分别达到了93.62%和91.42%。在 BUTPDB 数据集中,使用 2AVB 和 3AVB 对心电图信号进行 P 波定位的 F1 分数分别为 98.29% 和 62.65%。在两个独立的数据集中,AVB 检测算法对 2AVB 和 3AVB 的 F1 分数分别达到 83.33% 和 84.15%。本文的贡献在于将医学专业知识与数据增强技术和心电图分类相结合。所提出的 P-WaveNet 具有潜在的临床适用性。
Enhancing P-wave localization for accurate detection of second-degree and third-degree atrioventricular conduction blocks.
OBJECTIVE
This paper tackles the challenge of accurately detecting second-degree and third-degree atrioventricular block AVB) in electrocardiogram (ECG) signals through automated algorithms. The inaccurate detection of P-waves poses a difficulty in this process. To address this limitation, we propose a reliable method that significantly improves the performances of AVB detection by precisely localizing P-waves.
APPROACH
Our proposed P-WaveNet utilized an attention mechanism to extract spatial and temporal features, and employs a BiLSTM module to capture inter-temporal dependencies within the ECG signal. To overcome the scarcity of data for second-degree and third-degree AVB (2AVB,3AVB), a mathematical approach was employed to synthesize pseudo-data. By combining P-wave positions identified by the P-WaveNet with key medical features such as RR interval rhythm and PR intervals, we established a classification rule enabling automatic AVB detection.
MAIN RESULTS
The P-WaveNet achieved an F1 score of 93.62% and 91.42% for P-wave localization on the QTDB and LUDB datasets, respectively. In the BUTPDB dataset, the F1 scores for P-wave localization in ECG signals with 2AVB and 3AVB were 98.29% and 62.65%, respectively. Across two independent datasets, the AVB detection algorithm achieved F1 scores of 83.33% and 84.15% for 2AVB and 3AVB, respectively.
SIGNIFICANCE
Our proposed P-WaveNet demonstrates accurate identification of P-waves in complex ECGs, significantly enhancing AVB detection efficacy. This paper's contributions stem from the fusion of medical expertise with data augmentation techniques and ECG classification. The proposed P-WaveNet demonstrates potential clinical applicability.
期刊介绍:
Physiological Measurement publishes papers about the quantitative assessment and visualization of physiological function in clinical research and practice, with an emphasis on the development of new methods of measurement and their validation.
Papers are published on topics including:
applied physiology in illness and health
electrical bioimpedance, optical and acoustic measurement techniques
advanced methods of time series and other data analysis
biomedical and clinical engineering
in-patient and ambulatory monitoring
point-of-care technologies
novel clinical measurements of cardiovascular, neurological, and musculoskeletal systems.
measurements in molecular, cellular and organ physiology and electrophysiology
physiological modeling and simulation
novel biomedical sensors, instruments, devices and systems
measurement standards and guidelines.