整合对比学习和循环生成对抗网络,实现无创胎儿心电图提取。

IF 1.5 4区 医学 Q3 CARDIAC & CARDIOVASCULAR SYSTEMS
Rongrong Qu, Tingqiang Song, Guozheng Wei, Lili Wei, Wenjuan Cao, Jiale Song
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引用次数: 0

摘要

胎儿心电图(FECG)包含孕期胎儿的重要信息,因此提取胎儿心电图信号对监测胎儿健康至关重要。然而,从腹部心电图(AECG)中提取胎儿心电图信号面临着几个挑战:(1)胎儿心电图信号经常被噪声污染;(2)胎儿心电图信号经常被高振幅的母体心电图(MECG)所掩盖。为了解决这些问题并提高信号提取的准确性,本文提出了一种改进的循环生成对抗网络(CycleGAN),并将对比学习集成到 FECG 信号提取中。该模型在生成对抗网络的生成器中引入了双注意机制,集成了多头自注意(MSA)模块和信道自注意(CSA)模块,以提高生成信号的质量。此外,CycleGAN 的损失函数中还集成了对比三重损失,通过优化训练来提高提取的 FECG 信号与头皮胎儿心电图之间的相似性。利用 Physionet 的 ADFECG 数据集和 PCDB 数据集对所提出的方法进行了评估。在信号提取质量方面,平均平方误差(Mean Squared Error)降低到 0.036,平均绝对误差(Mean Absolute Error)降低到 0.009,皮尔逊相关系数(Pearson Correlation Coefficient)达到 0.924。在验证模型性能时,结构相似度指数达到 95.54%,峰值信噪比(PSNR)达到 38.87 dB,R 方(R2)达到 95.12%。此外,在 ADFECG 数据集上,QRS 波群检测的阳性预测值(PPV)、灵敏度(SEN)和 F1 分数也分别达到了 99.56%、99.43% 和 99.50%。在 PCDB 数据集上,QRS 波群检测的阳性预测值(PPV)、灵敏度(SEN)和 F1 分数也分别达到了 98.24%、98.60% 和 98.42%。它们均高于其他方法。因此,该模型在有效监测孕期胎儿健康方面具有重要的应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Integrating Contrastive Learning and Cycle Generative Adversarial Networks for Non-invasive Fetal ECG Extraction.

Integrating Contrastive Learning and Cycle Generative Adversarial Networks for Non-invasive Fetal ECG Extraction.

Fetal electrocardiogram (FECG) contains crucial information about the fetus during pregnancy, making the extraction of FECG signal essential for monitoring fetal health. However, extracting FECG signal from abdominal electrocardiogram (AECG) poses several challenges: (1) FECG signal is often contaminated by noise, and (2) FECG signal is frequently overshadowed by high-amplitude maternal electrocardiogram (MECG). To address these issues and enhance the accuracy of signal extraction, this paper proposes an improved Cycle Generative Adversarial Networks (CycleGAN) with integrated contrastive learning for FECG signal extraction. The model introduces a dual-attention mechanism in the generator of the generative adversarial network, incorporating a multi-head self-attention (MSA) module and a channel-wise self-attention (CSA) module to enhance the quality of generated signals. Additionally, a contrastive triplet loss is integrated into the CycleGAN loss function, optimizing training to increase the similarity between the extracted FECG signal and the scalp fetal electrocardiogram. The proposed method is evaluated using the ADFECG dataset and the PCDB dataset both from the Physionet. In terms of signal extraction quality, Mean Squared Error is reduced to 0.036, Mean Absolute Error (MAE) to 0.009, and Pearson Correlation Coefficient reaches 0.924. When validating the model performance, Structural Similarity Index achieves 95.54%, Peak Signal-to-Noise Ratio (PSNR) reaches 38.87 dB, and R-squared (R2) attains 95.12%. Furthermore, the positive predictive value (PPV), sensitivity (SEN) and F1-score for QRS wave cluster detection on the ADFECG dataset also reached 99.56%, 99.43% and 99.50%, respectively. On the PCDB dataset, the positive predictive value (PPV), sensitivity (SEN) and F1-score for QRS wave cluster detection also reached 98.24%, 98.60% and 98.42%, respectively. All of them are higher than other methods. Therefore, the proposed model has important applications in effective monitoring of fetal health during pregnancy.

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来源期刊
Pediatric Cardiology
Pediatric Cardiology 医学-小儿科
CiteScore
3.30
自引率
6.20%
发文量
258
审稿时长
12 months
期刊介绍: The editor of Pediatric Cardiology welcomes original manuscripts concerning all aspects of heart disease in infants, children, and adolescents, including embryology and anatomy, physiology and pharmacology, biochemistry, pathology, genetics, radiology, clinical aspects, investigative cardiology, electrophysiology and echocardiography, and cardiac surgery. Articles which may include original articles, review articles, letters to the editor etc., must be written in English and must be submitted solely to Pediatric Cardiology.
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