Studying Sleep: Towards the Identification of Hypnogram Features that Drive Expert Interpretation

Caspar van der Woerd, Hans van Gorp, Sylvie Dujardin, Manuel Sastry, Humberto Garcia Caballero, Fokke van Meulen, Stef van den Elzen, Sebastiaan Overeem, Pedro Fonseca (Corresponding author)

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Abstract

STUDY OBJECTIVES: Hypnograms contain a wealth of information and play an important role in sleep medicine. However, interpretation of the hypnogram is a difficult task and requires domain knowledge and "clinical intuition". This study aimed to uncover which features of the hypnogram drive interpretation by physicians. In other words, make explicit which features physicians implicitly look for in hypnograms.

METHODS: Three sleep experts evaluated up to 612 hypnograms, indicating normal or abnormal sleep structure and suspicion of disorders. ElasticNet and CNN classification models were trained to predict the collected expert evaluations using hypnogram features and stages as input. The models were evaluated using several measures, including accuracy, Cohen's kappa, Matthew's correlation coefficient, and confusion matrices. Finally, model coefficients and visual analytics techniques were used to interpret the models to associate hypnogram features with expert evaluation.

RESULTS: Agreement between models and experts (Kappa between 0.47 and 0.52) is similar to agreement between experts (Kappa between 0.38 and 0.50). Sleep fragmentation, measured by transitions between sleep stages per hour, and sleep stage distribution were identified as important predictors for expert interpretation.

CONCLUSIONS: By comparing hypnograms not solely on an epoch-by-epoch basis, but also on these more specific features that are relevant for the evaluation of experts, performance assessment of (automatic) sleep-staging and surrogate sleep trackers may be improved. In particular, sleep fragmentation is a feature that deserves more attention as it is often not included in the PSG report, and existing (wearable) sleep trackers have shown relatively poor performance on this aspect.

Original languageEnglish
Article numberzsad306
Number of pages11
JournalSleep
Volume47
Issue number3
Early online date1 Dec 2023
DOIs
Publication statusPublished - 1 Mar 2024

Funding

This work has been done in the IMPULS framework of the Eindhoven MedTech Innovation Center (e/MTIC, incorporating Eindhoven University of Technology, Philips Research, Sleep Medicine Center Kempenhaeghe). This activity is in part funded by the PPS program research and innovation of the Dutch Ministry of Economic Affairs and Climate. The funders had no role in the study design, decision to publish, or preparation of the manuscript. Acknowledgments SO, PF, SvdE, and CvdW designed the study. CvdW collected the data and conducted the analysis. SO, PF, and SvdE supervised the study. SO, SD, and MS assessed the hypnograms. FvM managed datasets and HGC provided technical support. All authors provided critical reviews of the manuscript. This work has been done in the IMPULS framework of the Eindhoven MedTech Innovation Center (e/MTIC, incorporating Eindhoven University of Technology, Philips Research, Sleep Medicine Center Kempenhaeghe). This activity is in part funded by the PPS program research and innovation of the Dutch Ministry of Economic Affairs and Climate. The funders had no role in the study design, decision to publish, or preparation of the manuscript.

FundersFunder number
Ministerie van Economische Zaken en Klimaat
Eindhoven University of Technology

    Keywords

    • Electroencephalography/methods
    • Humans
    • Polysomnography/methods
    • Reproducibility of Results
    • Sleep
    • Sleep Deprivation
    • Sleep Stages

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