Please use this identifier to cite or link to this item: https://repository.monashhealth.org/monashhealthjspui/handle/1/57995
Title: FetalSleepNet: A Transfer Learning Framework with Spectral Equalisation Domain Adaptation for Fetal Sleep State Classification.
Authors: Tang W.;Vargas-Calixto J.;Katebi N.;Tran N.;Kelly S.B.;Clifford G.D.;Galinsky R.;Marzbanrad F.
Monash Health Department(s): Hudson Institute - The Ritchie Centre
Obstetrics and Gynaecology (Monash Women's)
Institution: (Tang, Marzbanrad) Monash University, Department of Electrical and Computer Systems Engineering, Melbourne, Australia
(Vargas-Calixto, Katebi, Clifford) Emory University, Department of Biomedical Informatics, Atlanta, United States
(Tran, Kelly, Galinsky) Ritchie Centre, Hudson Institute of Medical Research, Melbourne, Australia
(Clifford) Georgia Institute of Technology, Department of Biomedical Engineering, Atlanta, United States
(Galinsky) Monash University, Department of Obstetrics and Gynaecology, Melbourne, Australia
Issue Date: 16-Apr-2026
Copyright year: 2026
Publisher: Institute of Electrical and Electronics Engineers Inc.
Place of publication: United States
Publication information: IEEE Journal of Biomedical and Health Informatics. (no pagination), 2026. Date of Publication: 2026.
Journal: IEEE Journal of Biomedical and Health Informatics
Abstract: Objective: Fetal sleep state classification is essential for identifying neurodevelopmental complications like hypoxia, but manual annotation is subjective and labor intensive, and fetal EEG (fEEG) data is extremely scarce. Method(s): We propose FetalSleepNet, the first deep learning architecture specifically developed for automated sleep staging from the fEEG. To address the scarcity of labeled data, we implement the first cross-developmental (adult-to fetal) and cross-species (human-to-sheep) transfer learning framework for this task, utilizing Spectral Equalisation (SE) to align the frequency-domain characteristics of adult human EEG with the fetal sheep target. Result(s): Our findings prove the irreplaceable effective ness of this adaptation: while direct transfer on raw EEG almost fails with only 18.7% accuracy, applying SE allows even a frozen model to reach 73.6% accuracy, effectively mitigating the cross-domain spectral mismatch. With full fine-tuning, FetalSleepNet achieves a state-of-the-art accuracy of 86.6% and a macro F1-score of 62.5%. Conclusion(s): Beyond high-accuracy classification, Fetal SleepNet establishes a robust "label engine" paradigm. By generating high-fidelity neurophysiological annotations, it facilitates a framework for training proxy sleep stagers on broader, non-invasive clinical modalities. This paves the way for scalable, real-time fetal monitoring and early risk prediction in clinical settings.Copyright © 2013 IEEE.
DOI: https://dx.doi.org/10.1109/JBHI.2026.3681572
PubMed URL: 41950122
URI: https://repository.monashhealth.org/monashhealthjspui/handle/1/57995
Type: Article In Press
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