Clifford Wavelet Entropy for Fetal ECG Extraction
Autor: | Carlo Cattani, Malika Jallouli, Anouar Ben Mabrouk, Sabrine Arfaoui |
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Jazyk: | angličtina |
Rok vydání: | 2021 |
Předmět: |
Computer science
Science QC1-999 Noise reduction Fetal heart rate monitoring 0206 medical engineering General Physics and Astronomy fetal ECG 02 engineering and technology Astrophysics Signal Article Clifford wavelets/multiwavelets Wavelet 0202 electrical engineering electronic engineering information engineering Entropy (energy dispersal) wavelets/multiwavelets business.industry ECG Physics Fetal heart monitoring 92C55 Pattern recognition Wavelet entropy 020601 biomedical engineering QB460-466 Fetal ecg abdominal ECG Haar–Faber–Schauder wavelets/multiwavelets 020201 artificial intelligence & image processing Artificial intelligence 42C40 business entropy |
Zdroj: | Entropy Volume 23 Issue 7 Entropy, Vol 23, Iss 844, p 844 (2021) |
ISSN: | 1099-4300 |
Popis: | Analysis of the fetal heart rate during pregnancy is essential for monitoring the proper development of the fetus. Current fetal heart monitoring techniques lack the accuracy in fetal heart rate monitoring and features acquisition, resulting in diagnostic medical issues. The challenge lies in the extraction of the fetal ECG from the mother ECG during pregnancy. This approach has the advantage of being a reliable and non-invasive technique. In the present paper, a wavelet/multiwavelet method is proposed to perfectly extract the fetal ECG parameters from the abdominal mother ECG. In a first step, due to the wavelet/mutiwavelet processing, a denoising procedure is applied to separate the noised parts from the denoised ones. The denoised signal is assumed to be a mixture of both the MECG and the FECG. One of the well-known measures of accuracy in information processing is the concept of entropy. In the present work, a wavelet/multiwavelet Shannon-type entropy is constructed and applied to evaluate the order/disorder of the extracted FECG signal. The experimental results apply to a recent class of Clifford wavelets constructed in Arfaoui, et al. J. Math. Imaging Vis. 2020, 62, 73–97, and Arfaoui, et al. Acta Appl. Math. 2020, 170, 1–35. Additionally, classical Haar–Faber–Schauder wavelets are applied for the purpose of comparison. Two main well-known databases have been applied, the DAISY database and the CinC Challenge 2013 database. The achieved accuracy over the test databases resulted in Se = 100%, PPV = 100% for FECG extraction and peak detection. |
Databáze: | OpenAIRE |
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