Background
Type: Article

Fetal ECG Extraction From Maternal ECG Using Attention-Based CycleGAN

Journal: IEEE Journal of Biomedical and Health Informatics (21682194)Year: 2022Volume: Issue: 2Pages: 515 - 526
Marateb H.a Mohebian M. Vedaei S.S. Wahid K.A. Dinh A. Tavakolian K.
All Open Access; Green Open AccessDOI:10.1109/JBHI.2021.3111873Language: English

Abstract

A non-invasive fetal electrocardiogram (FECG) is used to monitor the electrical pulse of the fetal heart. Decomposing the FECG signal from the maternal ECG (MECG) is a blind source separation problem, which is hard due to the low amplitude of the 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 the MECG to the FECG. The high correlation between maternal and fetal ECG fragments decreases the performance of convolution layers. Therefore, the masking region of interest based on the attention mechanism was performed to improve the signal generators' precision. The sine activation function was also used to retain more details when converting two signal domains. Three available datasets from the Physionet, including the A&D FECG, NI-FECG, and NI-FECG challenge, and one synthetic dataset using FECGSYN toolbox, were used to evaluate the performance. The proposed method could map an abdominal MECG to a scalp FECG with an average of 98% R-Square [CI 95%: 97%, 99%] as the goodness of fit on the 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 the A&D FECG, NI-FECG and NI-FECG challenge datasets, respectively. Also, the distortion was in the 'very good' and 'good' ranges. These results are comparable to the state-of-the-art results; thus, the proposed algorithm has the potential to be used for high-performance signal-to-signal conversion. © 2013 IEEE.


Author Keywords

attention layerblind source separationCycleGANFetal ECG

Other Keywords

AlgorithmsElectrocardiographyFemaleFetal MonitoringFetusHumansPregnancySignal Processing, Computer-AssistedAdaptive filteringAdaptive filtersBlind source separationElectrocardiographyImage segmentationActivation functionsAttention mechanismsDecomposition techniqueFetal ecg extractionsFetal electrocardiogramsPerformance signalsPotential exposureSignal conversionaction potentialArticleartificial neural networkbrain depth stimulationcontrolled studydecompositionelectrocardiogramelectroencephalographyfetus electrocardiographyheart arrhythmiaheart rateheart rate variabilityheart right ventricle outflow tracthumanhuman experimentlearning algorithmnerve cell networknormal humanparasympathetic tonepredictive valueQRS complexsignal noise ratiosignal processingsimulationspeech intelligibilitysupport vector machinetime series analysisvalidation processalgorithmelectrocardiographyfemalefetusfetus monitoringphysiologypregnancyproceduressignal processingBiomedical signal processing