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一种用于无创胎儿心电图信号提取的深度学习框架。

A deep learning framework for noninvasive fetal ECG signal extraction.

作者信息

Wahbah Maisam, Zitouni M Sami, Al Sakaji Raghad, Funamoto Kiyoe, Widatalla Namareq, Krishnan Anita, Kimura Yoshitaka, Khandoker Ahsan H

机构信息

College of Engineering and Information Technology, University of Dubai, Dubai, United Arab Emirates.

Department of Biomedical Engineering, Khalifa University, Abu Dhabi, United Arab Emirates.

出版信息

Front Physiol. 2024 Apr 22;15:1329313. doi: 10.3389/fphys.2024.1329313. eCollection 2024.

Abstract

The availability of proactive techniques for health monitoring is essential to reducing fetal mortality and avoiding complications in fetal wellbeing. In harsh circumstances such as pandemics, earthquakes, and low-resource settings, the incompetence of many healthcare systems worldwide in providing essential services, especially for pregnant women, is critical. Being able to continuously monitor the fetus in hospitals and homes in a direct and fast manner is very important in such conditions. Monitoring the health of the baby can potentially be accomplished through the computation of vital bio-signal measures using a clear fetal electrocardiogram (ECG) signal. The aim of this study is to develop a framework to detect and identify the R-peaks of the fetal ECG directly from a 12 channel abdominal composite signal. Thus, signals were recorded noninvasively from 70 pregnant (healthy and with health conditions) women with no records of fetal abnormalities. The proposed model employs a recurrent neural network architecture to robustly detect the fetal ECG R-peaks. To test the proposed framework, we performed both subject-dependent (5-fold cross-validation) and independent (leave-one-subject-out) tests. The proposed framework achieved average accuracy values of 94.2% and 88.8%, respectively. More specifically, the leave-one-subject-out test accuracy was 86.7% during the challenging period of vernix caseosa layer formation. Furthermore, we computed the fetal heart rate from the detected R-peaks, and the demonstrated results highlight the robustness of the proposed framework. This work has the potential to cater to the critical industry of maternal and fetal healthcare as well as advance related applications.

摘要

具备主动式健康监测技术对于降低胎儿死亡率和避免胎儿健康并发症至关重要。在大流行、地震和资源匮乏等恶劣情况下,全球许多医疗系统在提供基本服务方面的无能,尤其是对孕妇的服务,是至关重要的问题。在这种情况下,能够在医院和家中以直接且快速的方式持续监测胎儿非常重要。通过使用清晰的胎儿心电图(ECG)信号计算重要的生物信号指标,有可能实现对胎儿健康的监测。本研究的目的是开发一个框架,直接从12通道腹部复合信号中检测和识别胎儿心电图的R波峰。因此,对70名未记录胎儿异常的孕妇(健康和有健康状况)进行了无创信号记录。所提出的模型采用递归神经网络架构来稳健地检测胎儿心电图的R波峰。为了测试所提出的框架,我们进行了依赖受试者的(5折交叉验证)和独立的(留一受试者法)测试。所提出的框架分别实现了94.2%和88.8%的平均准确率值。更具体地说,在胎儿皮脂层形成的具有挑战性的时期,留一受试者法测试准确率为86.7%。此外,我们从检测到的R波峰计算胎儿心率,所展示的结果突出了所提出框架的稳健性。这项工作有潜力满足母婴保健的关键行业需求,并推动相关应用的发展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4ccb/11073781/805e9101f800/fphys-15-1329313-g001.jpg

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