Sarafan Sadaf, Le Tai, Naderi Amir Mohammad, Nguyen Quoc-Dinh, Tiang-Yu Kuo Brandon, Ghirmai Tadesse, Han Huy-Dung, Lau Michael P H, Cao Hung
Department of Electrical Engineering and Computer Science, University of California, Irvine, CA 92697, USA.
Department of Electronics and Computer Engineering, Hanoi University of Science and Technology, Hanoi 10000, Vietnam.
Technologies (Basel). 2020 Jun;8(2). doi: 10.3390/technologies8020033. Epub 2020 Jun 5.
Monitoring of fetal electrocardiogram (fECG) would provide useful information about fetal wellbeing as well as any abnormal development during pregnancy. Recent advances in flexible electronics and wearable technologies have enabled compact devices to acquire personal physiological signals in the home setting, including those of expectant mothers. However, the high noise level in the daily life renders long-entrenched challenges to extract fECG from the combined fetal/maternal ECG signal recorded in the abdominal area of the mother. Thus, an efficient fECG extraction scheme is a dire need. In this work, we intensively explored various extraction algorithms, including template subtraction (TS), independent component analysis (ICA), and extended Kalman filter (EKF) using the data from the PhysioNet 2013 Challenge. Furthermore, the modified data with Gaussian and motion noise added, mimicking a practical scenario, were utilized to examine the performance of algorithms. Finally, we combined different algorithms together, yielding promising results, with the best performance in the F1 score of 92.61% achieved by an algorithm combining ICA and TS. With the data modified by adding different types of noise, the combination of ICA-TS-ICA showed the highest F1 score of 85.4%. It should be noted that these combined approaches required higher computational complexity, including execution time and allocated memory compared with other methods. Owing to comprehensive examination through various evaluation metrics in different extraction algorithms, this study provides insights into the implementation and operation of state-of-the-art fetal and maternal monitoring systems in the era of mobile health.
监测胎儿心电图(fECG)将提供有关胎儿健康状况以及孕期任何异常发育的有用信息。柔性电子学和可穿戴技术的最新进展使得紧凑型设备能够在家庭环境中获取个人生理信号,包括准妈妈的生理信号。然而,日常生活中的高噪声水平给从母亲腹部记录的胎儿/母亲混合心电图信号中提取fECG带来了长期存在的挑战。因此,迫切需要一种高效的fECG提取方案。在这项工作中,我们使用来自PhysioNet 2013挑战赛的数据,深入探索了各种提取算法,包括模板减法(TS)、独立成分分析(ICA)和扩展卡尔曼滤波器(EKF)。此外,利用添加了高斯噪声和运动噪声的修改后数据来模拟实际场景,以检验算法的性能。最后,我们将不同的算法结合在一起,取得了有希望的结果,通过ICA和TS相结合的算法在F1分数上取得了92.61%的最佳性能。对于添加了不同类型噪声的修改后数据,ICA-TS-ICA的组合显示出最高的F1分数,为85.4%。应该注意的是,与其他方法相比,这些组合方法需要更高的计算复杂度,包括执行时间和分配的内存。由于通过对不同提取算法的各种评估指标进行了全面检查,本研究为移动健康时代最先进的胎儿和母亲监测系统的实施和运行提供了见解。