Multi-Scored Sleep Databases: How to Exploit the Multiple-Labels in Automated Sleep Scoring
Luigi Fiorillo, Davide Pedroncelli, Valentina Agostini, Paolo Favaro,, Francesca Dalia Faraci

TL;DR
This study introduces a novel training method for sleep scoring models that leverages multiple scorers' annotations, improving model alignment with scorer consensus and capturing inter-scorer variability.
Contribution
The paper proposes a label smoothing technique with a soft-consensus distribution to incorporate multiple scorers' knowledge into deep learning sleep scoring models.
Findings
Model performance improved across all databases.
Increased similarity (up to 6.4%) between model and scorer consensus.
Enhanced adaptation to scorer variability.
Abstract
Study Objectives: Inter-scorer variability in scoring polysomnograms is a well-known problem. Most of the existing automated sleep scoring systems are trained using labels annotated by a single scorer, whose subjective evaluation is transferred to the model. When annotations from two or more scorers are available, the scoring models are usually trained on the scorer consensus. The averaged scorer's subjectivity is transferred into the model, losing information about the internal variability among different scorers. In this study, we aim to insert the multiple-knowledge of the different physicians into the training procedure. The goal is to optimize a model training, exploiting the full information that can be extracted from the consensus of a group of scorers. Methods: We train two lightweight deep learning based models on three different multi-scored databases. We exploit the label…
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Taxonomy
TopicsObstructive Sleep Apnea Research · EEG and Brain-Computer Interfaces · Traffic Prediction and Management Techniques
MethodsLabel Smoothing
