Department of Cybernetics and Biomedical Engineering, Faculty of Electrical Engineering and Computer Science, VSB-Technical University of Ostrava, 17 Listopadu 15, 70833 Ostrava, Czech Republic.
Department of Electrical and Computer Engineering, University of Texas El Paso, 500 W University Ave, El Paso, TX 79968, USA.
Sensors (Basel). 2017 May 19;17(5):1154. doi: 10.3390/s17051154.
This paper is focused on the design, implementation and verification of a novel method for the optimization of the control parameters (such as step size μ and filter order ) of LMS and RLS adaptive filters used for noninvasive fetal monitoring. The optimization algorithm is driven by considering the ECG electrode positions on the maternal body surface in improving the performance of these adaptive filters. The main criterion for optimal parameter selection was the Signal-to-Noise Ratio (SNR). We conducted experiments using signals supplied by the latest version of our LabVIEW-Based Multi-Channel Non-Invasive Abdominal Maternal-Fetal Electrocardiogram Signal Generator, which provides the flexibility and capability of modeling the principal distribution of maternal/fetal ECGs in the human body. Our novel algorithm enabled us to find the optimal settings of the adaptive filters based on maternal surface ECG electrode placements. The experimental results further confirmed the theoretical assumption that the optimal settings of these adaptive filters are dependent on the ECG electrode positions on the maternal body, and therefore, we were able to achieve far better results than without the use of optimization. These improvements in turn could lead to a more accurate detection of fetal hypoxia. Consequently, our approach could offer the potential to be used in clinical practice to establish recommendations for standard electrode placement and find the optimal adaptive filter settings for extracting high quality fetal ECG signals for further processing. Ultimately, diagnostic-grade fetal ECG signals would ensure the reliable detection of fetal hypoxia.
本文专注于设计、实现和验证一种新颖的方法,用于优化用于非侵入性胎儿监测的 LMS 和 RLS 自适应滤波器的控制参数(如步长 μ 和滤波器阶数)。该优化算法的驱动力是考虑母体体表上的 ECG 电极位置,以提高这些自适应滤波器的性能。最优参数选择的主要标准是信噪比(SNR)。我们使用我们最新版本的基于 LabVIEW 的多通道非侵入式腹部母体-胎儿心电图信号发生器提供的信号进行实验,该发生器提供了建模人体中母体/胎儿 ECG 主要分布的灵活性和能力。我们的新算法使我们能够根据母体表面 ECG 电极放置找到自适应滤波器的最优设置。实验结果进一步证实了理论假设,即这些自适应滤波器的最优设置取决于母体身体上的 ECG 电极位置,因此,我们能够取得比不使用优化更好的结果。这些改进反过来又可以实现更准确地检测胎儿缺氧。因此,我们的方法有可能在临床实践中被用于建立标准电极放置的建议,并找到提取高质量胎儿 ECG 信号以进行进一步处理的最优自适应滤波器设置。最终,诊断级别的胎儿 ECG 信号将确保可靠地检测胎儿缺氧。