Department of Information Engineering, University of Padova, I-35131 Padova, Italy.
Department of Electrical Engineering, Eindhoven University of Technology, 5600 MB Eindhoven, The Netherlands.
Sensors (Basel). 2021 Jun 23;21(13):4298. doi: 10.3390/s21134298.
Multi-channel measurements from the maternal abdomen acquired by means of dry electrodes can be employed to promote long-term monitoring of fetal heart rate (fHR). The signals acquired with this type of electrode have a lower signal-to-noise ratio and different artifacts compared to signals acquired with conventional wet electrodes. Therefore, starting from the benchmark algorithm with the best performance for fHR estimation proposed by Varanini et al., we propose a new method specifically designed to remove artifacts typical of dry-electrode recordings. To test the algorithm, experimental textile electrodes were employed that produce artifacts typical of dry and capacitive electrodes. The proposed solution is based on a hybrid (hardware and software) pre-processing step designed specifically to remove the disturbing component typical of signals acquired with these electrodes (triboelectricity artifacts and amplitude modulations). The following main processing steps consist of the removal of the maternal ECG by blind source separation, the enhancement of the fetal ECG and identification of the fetal QRS complexes. Main processing is designed to be robust to the high-amplitude motion artifacts that corrupt the acquisition. The obtained denoising system was compared with the benchmark algorithm both on semi-simulated and on real data. The performance, quantified by means of sensitivity, F1-score and root-mean-square error metrics, outperforms the performance obtained with the original method available in the literature. This result proves that the design of a dedicated processing system based on the signal characteristics is necessary for reliable and accurate estimation of the fHR using dry, textile electrodes.
通过干电极从母体腹部获得的多通道测量结果可用于促进胎儿心率 (fHR) 的长期监测。与使用传统湿电极获得的信号相比,这种类型的电极获得的信号具有更低的信噪比和不同的伪影。因此,我们从 Varanini 等人提出的用于 fHR 估计的基准算法开始,提出了一种专门设计的新方法,用于去除干电极记录特有的伪影。为了测试算法,我们使用了实验用的纺织电极,这些电极产生了干电极和电容电极特有的伪影。所提出的解决方案基于混合(硬件和软件)预处理步骤,专门设计用于去除这些电极采集的信号中特有的干扰分量(摩擦电伪影和幅度调制)。主要处理步骤包括通过盲源分离去除母体 ECG,增强胎儿 ECG 并识别胎儿 QRS 复合波。主要处理过程旨在对高振幅运动伪影具有鲁棒性,这些伪影会使采集失真。所获得的去噪系统在半仿真和真实数据上与基准算法进行了比较。通过灵敏度、F1 分数和均方根误差等指标量化的性能优于文献中可用的原始方法的性能。这一结果证明,对于使用干电极和纺织电极可靠、准确地估计 fHR,基于信号特征设计专用处理系统是必要的。