Journal article

Rapid detection of fetal compromise using input length invariant deep learning on fetal heart rate signals

L Mendis, M Palaniswami, E Keenan, F Brownfoot

Scientific Reports | NATURE PORTFOLIO | Published : 2024

Abstract

Standard clinical practice to assess fetal well-being during labour utilises monitoring of the fetal heart rate (FHR) using cardiotocography. However, visual evaluation of FHR signals can result in subjective interpretations leading to inter and intra-observer disagreement. Therefore, recent studies have proposed deep-learning-based methods to interpret FHR signals and detect fetal compromise. These methods have typically focused on evaluating fixed-length FHR segments at the conclusion of labour, leaving little time for clinicians to intervene. In this study, we propose a novel FHR evaluation method using an input length invariant deep learning model (FHR-LINet) to progressively evaluate FH..

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Grants

Awarded by University of Melbourne


Funding Acknowledgements

Lochana Mendis is supported by the Melbourne Research Scholarship and a scholarship from the Graeme Clark Institute for Biomedical Engineering at the University of Melbourne. Emerson Keenan is supported by an Early Career Research Fellowship from the Department of Obstetrics and Gynaecology at the University of Melbourne. Fiona Brownfoot is supported by an NHMRC Early Career Fellowship (NHMRC #1142636) and a Norman Beischer Clinical Research Fellowship. We thank Jiri Spilka for his assistance with the FHR feature extraction code.