论文标题
使用基于注意的自行车从母体心电图中提取胎儿心电图
Fetal ECG Extraction from Maternal ECG using Attention-based CycleGAN
论文作者
论文摘要
非侵入性胎儿心电图(FECG)用于监测胎儿心脏的电脉冲。从母体心电图(MECG)分解FECG信号是一个盲源分离问题,由于FECG的幅度低,R波的重叠以及潜在的暴露于不同来源的噪声,这很难。传统的分解技术(例如自适应过滤器)需要调整,对齐或预配置,例如对噪声或所需信号进行建模。将MECG映射到有效的FECG。产妇和胎儿心电图之间的高相关性降低了卷积层的性能。因此,使用注意机制的掩蔽区域用于提高信号发生器的精度。还使用了正弦激活函数,因为它可以在转换两个信号域时保留更多细节。使用Physionet的三个可用数据集,包括A&D FECG,Ni-Fecg和Ni-Fecg挑战,以及使用FECGSYN工具箱的一个合成数据集来评估性能。所提出的方法可以将腹部MECG映射到头皮FECG,平均R-Square [CI 95%:97%,99%]作为A&D FECG数据集的良好性。 Moreover, it achieved 99.7 % F1-score [CI 95%: 97.8-99.9], 99.6% F1-score [CI 95%: 98.2%, 99.9%] and 99.3% F1-score [CI 95%: 95.3%, 99.9%] for fetal QRS detection on, A&D FECG, NI-FECG and NI-FECG challenge数据集分别。这些结果与最新的结果相当。因此,所提出的算法具有用于高性能信号到信号转换的潜力。
Non-invasive fetal electrocardiogram (FECG) is used to monitor the electrical pulse of the fetal heart. Decomposing the FECG signal from maternal ECG (MECG) is a blind source separation problem, which is hard due to the low amplitude of FECG, the overlap of R waves, and the potential exposure to noise from different sources. Traditional decomposition techniques, such as adaptive filters, require tuning, alignment, or pre-configuration, such as modeling the noise or desired signal. to map MECG to FECG efficiently. The high correlation between maternal and fetal ECG parts decreases the performance of convolution layers. Therefore, the masking region of interest using the attention mechanism is performed for improving signal generators' precision. The sine activation function is also used since it could retain more details when converting two signal domains. Three available datasets from the Physionet, including A&D FECG, NI-FECG, and NI-FECG challenge, and one synthetic dataset using FECGSYN toolbox, are used to evaluate the performance. The proposed method could map abdominal MECG to scalp FECG with an average 98% R-Square [CI 95%: 97%, 99%] as the goodness of fit on A&D FECG dataset. Moreover, it achieved 99.7 % F1-score [CI 95%: 97.8-99.9], 99.6% F1-score [CI 95%: 98.2%, 99.9%] and 99.3% F1-score [CI 95%: 95.3%, 99.9%] for fetal QRS detection on, A&D FECG, NI-FECG and NI-FECG challenge datasets, respectively. These results are comparable to the state-of-the-art; thus, the proposed algorithm has the potential of being used for high-performance signal-to-signal conversion.