@inproceedings{CI-Seraphim23,
author = {Mathieu Seraphim and Paul Dequidt and Alexis Lechervy and Florian Yger and Luc Brun and Olivier Etard}, editor = {Nicolas Tsapatsoulis and Andreas Lanitis and Marios Pattichis and Constantinos S. Pattichis and Christos Kyrkou and Efthyvoulos Kyriacou and Zenonas Theodosiou and Andreas Panayides}, title = {Temporal Sequences of {EEG} Covariance Matrices for Automated Sleep Stage Scoring with Attention Mechanisms}, booktitle = {Computer Analysis of Images and Patterns - 20th International Conference, {CAIP} 2023, Limassol, Cyprus, September 25-28, 2023, Proceedings, Part {II}}, series = {Lecture Notes in Computer Science}, volume = {14185}, pages = {67--76}, publisher = {Springer}, year = {2023}, doi = {10.1007/978-3-031-44240-7_7}, url = {Springer:=https://link.springer.com/chapter/10.1007/978-3-031-44240-7_5, HAL:=https://hal.science/hal-04216925v1}, theme = "pattern", abstract ="Sleep monitoring has traditionally required expensive equipment and expert assessment. Wearable devices are however becoming a viable option for monitoring sleep. This study investigates methods for autonomously identifying sleep segments base on wearable device data. We employ and evaluate machine and deep learning models on the benchmark MESA dataset, with results showing that they outperform traditional methods in terms of accuracy, F1 score, and Matthews Correlation Coefficient (MCC). The most accurate model, namely Light Gradient Boosting Machine, obtained an F1 score of 0.93 and an MCC of 0.73. Additionally, sleep quality metrics were used to assess the models. Furthermore, it should be noted that the proposed approach is device-agnostic, and more accessible and cost-effective than the traditional polysomnography (PSG) methods."
}