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Multimodal deep learning approach to predicting neurological recovery from coma after cardiac arrest

Authors :
Krones, Felix H.
Walker, Ben
Parsons, Guy
Lyons, Terry
Mahdi, Adam
Publication Year :
2024

Abstract

This work showcases our team's (The BEEGees) contributions to the 2023 George B. Moody PhysioNet Challenge. The aim was to predict neurological recovery from coma following cardiac arrest using clinical data and time-series such as multi-channel EEG and ECG signals. Our modelling approach is multimodal, based on two-dimensional spectrogram representations derived from numerous EEG channels, alongside the integration of clinical data and features extracted directly from EEG recordings. Our submitted model achieved a Challenge score of $0.53$ on the hidden test set for predictions made $72$ hours after return of spontaneous circulation. Our study shows the efficacy and limitations of employing transfer learning in medical classification. With regard to prospective implementation, our analysis reveals that the performance of the model is strongly linked to the selection of a decision threshold and exhibits strong variability across data splits.<br />Comment: 5 figures, 2 tables

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2403.06027
Document Type :
Working Paper