Please use this identifier to cite or link to this item: https://accedacris.ulpgc.es/jspui/handle/10553/158573
Title: Singular Value Decomposition Entropy Analysis and Deep Learning Models Based on Genetic Algorithms for Early Diagnosis of Fetal Arrhythmia
Authors: Valdez, Zayd Isaac
Díaz, Luz Alexandra
Flores-Chávez, Santiago
Cornejo, Miguel Vizcardo
Ravelo-García, Antonio G. 
UNESCO Clasification: 3314 Tecnología médica
Issue Date: 2024
Journal: Computers in Cardiology 
Conference: 51st International Computing in Cardiology, CinC 2024 
Abstract: The term fetal arrhythmia refers to irregular fetal heart rhythms, with the established heart rate range being 120 to 160 beats per minute (bpm). Fetal arrhythmias occur in 1 to 2% of pregnancies; and although the majority of these are benign and transient, both tachyarrhythmia and bradyarrhythmia in some cases can indicate a serious condition for the fetus or the mother. Thus, a persistent fetal arrhythmia can lead to decreased cardiac output, heart failure, hydrops, and even fetal demise. As a result of this situation, an early diagnosis is crucial to adequately address this condition and reduce related mortality. Therefore, this study proposes the use of SVD entropy for characterizing ECG data from 6 channels (fetal and maternal), aiming to differentiate between healthy and diseased individuals. Consequently, a neural network could classify them, thus enabling a non-invasive early diagnosis of fetal arrhythmia. Additionally, it aims to enhance the performance of this technique by employing genetic algorithms for data augmentation and selecting the optimal architecture for the neural network, thereby ensuring a global accuracy of over 88% in fetal arrhythmia risk stratification.
URI: https://accedacris.ulpgc.es/jspui/handle/10553/158573
ISSN: 2325-8861
DOI: 10.22489/CinC.2024.150
Source: Computing in Cardiology[ISSN 2325-8861],v. 51, (Enero 2024)
Appears in Collections:Actas de congresos
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