Multi-scored sleep databases: how to exploit the multiple-labels in automated sleep scoring

Author:

Fiorillo Luigi12ORCID,Pedroncelli Davide3,Agostini Valentina3ORCID,Favaro Paolo1,Faraci Francesca Dalia2

Affiliation:

1. Department of Mathematics, Statistics and Computer Science, Institute of Computer Science, University of Bern , Bern , Switzerland

2. Department of Innovative Technologies, Institute of Digital Technologies for Personalized Healthcare (MeDiTech), University of Applied Sciences and Arts of Southern Switzerland , Lugano , Switzerland

3. Department of Electronics and Telecommunications, Politecnico di Torino , Torino , Italy

Abstract

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 smoothing technique together with a soft-consensus (LSSC) distribution to insert the multiple-knowledge in the training procedure of the model. We introduce the averaged cosine similarity metric (ACS) to quantify the similarity between the hypnodensity-graph generated by the models with-LSSC and the hypnodensity-graph generated by the scorer consensus. Results The performance of the models improves on all the databases when we train the models with our LSSC. We found an increase in ACS (up to 6.4%) between the hypnodensity-graph generated by the models trained with-LSSC and the hypnodensity-graph generated by the consensus. Conclusion Our approach definitely enables a model to better adapt to the consensus of the group of scorers. Future work will focus on further investigations on different scoring architectures and hopefully large-scale-heterogeneous multi-scored datasets.

Funder

Sleep Physician Assistant System

Publisher

Oxford University Press (OUP)

Subject

Physiology (medical),Neurology (clinical)

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