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Bridging the Source-Target Mismatch with Pseudo Labeling for Neonatal Seizure Detection

2023 31st European Signal Processing Conference (EUSIPCO)(2023)

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Abstract
The mismatch between training and testing conditions is a known problem in the machine learning community. In this work, we outline a process of how a model which was trained under one set of conditions can be adapted to a new set of conditions by means of pseudo labeling. This is shown for the domain area of neonatal seizure detection. A previously developed deep learning architecture is first trained on a publicly available source dataset. It is then evaluated on another target dataset which was recorded in a different center, with different equipment, and annotated by a different expert. This model is then used to create pseudo labels on a sample of the target dataset, fine-tuned with the created pseudo labels, and re-evaluated on the target dataset. The results show a relative improvement of 13.5% and 28.8% in AUC and the number of seizures detected respectively. Various factors of the pseudo labeling procedure such as the amount of data vs confidence in pseudo labels are analyzed and presented.
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Key words
pseudo labeling,training and testing conditions mismatch,EEG,neonatal seizure detection,deep learning
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