胎儿心电提取中腹部心电图线性化对非因果滤波结构的影响

E. D, S. M
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引用次数: 0

摘要

胎儿心电图(FECG)的提取在监测胎儿生长和胎儿心脏疾病的诊断中起着重要作用。本研究提出了一种非因果滤波结构中的线性化处理方法来提取胎儿心电信号。线性化的目的是为了匹配腹胸心电图基线,提高自适应滤波的性能。该方法首先从胸部心电图(TECG)和腹部心电图(AECG)记录中检测母体r -峰。然后使用检测到的峰值点的振幅估计斜率。根据估计的斜率,腹部心电图被线性化,然后作为非随机自适应滤波器的主要输入。非随机滤波器使用未来和过去的样本来提取样本指数n处的胎儿心电图。使用胎母信噪比(FmSNR)、相关系数、峰值均方根差(PRD)和r -峰检测精度(RPDA)等指标来评估算法的性能。数据集即Daisy和Physionet用于分析。该方法在Physionet数据集上的FmSNR、相关系数、PRD和RPDA分别为8.63dB、0.9872、81.98%和97.21%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of Linearization in Abdominal ECG for Non-Causal Filtering Structure in Fetal ECG Extraction
Extraction of fetal electrocardiogram (FECG) plays a major role in monitoring fetal growth and in the diagnosis of fetal heart disorder. This research study proposes a linearization process in a Non-Causal filtering structure for extracting the fetal ECG. The linearization aims to match the baselines of abdominal and thorax ECG which improves the performance in adaptive filtering. The method initially detects the maternal R-peaks from the thorax ECG (TECG) recordings and abdominal ECG (AECG) recordings. The slope is then estimated using the amplitude of the detected peak points. Based on the estimated slopes, the abdominal ECG is then linearized which is then fed as the primary input for the non-casual adaptive filter. The non-casual filter uses both the future and past samples to extract the fetal ECG at sample index n. The metrics like, fetal to maternal signal-to-noise ratio (FmSNR), Correlation coefficient, peak root mean square difference (PRD), and R-peak detection accuracy (RPDA) were used to evaluate the algorithm performance. The datasets namely Daisy and Physionet are used for analysis. The method provides an FmSNR, correlation coefficient, PRD, and RPDA of 8.63dB, 0.9872, 81.98%, and 97.21 % respectively when evaluated on the Physionet dataset.
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