» Articles » PMID: 39095608

GRU-powered Sleep Stage Classification with Permutation-based EEG Channel Selection

Overview
Journal Sci Rep
Specialty Science
Date 2024 Aug 2
PMID 39095608
Authors
Affiliations
Soon will be listed here.
Abstract

We present a new approach to classifying the sleep stage that incorporates a computationally inexpensive method based on permutations for channel selection and takes advantage of deep learning power, specifically the gated recurrent unit (GRU) model, along with other deep learning methods. By systematically permuting the electroencephalographic (EEG) channels, different combinations of EEG channels are evaluated to identify the most informative subset for the classification of the 5-class sleep stage. For analysis, we used an EEG dataset that was collected at the International Institute for Integrative Sleep Medicine (WPI-IIIS) at the University of Tsukuba in Japan. The results of these explorations provide many new insights such as the (1) drastic decrease in performance when channels are fewer than 3, (2) 3-random channels selected by permutation provide the same or better prediction than the 3 channels recommended by the American Academy of Sleep Medicine (AASM), (3) N1 class suffers the most in prediction accuracy as the channels drop from 128 to 3 random or 3 AASM, and (4) no single channel provides acceptable levels of accuracy in the prediction of 5 classes. The results obtained show the GRU's ability to retain essential temporal information from EEG data, which allows capturing the underlying patterns associated with each sleep stage effectively. Using permutation-based channel selection, we enhance or at least maintain as high model efficiency as when using high-density EEG, incorporating only the most informative EEG channels.

Citing Articles

Remote Sensing Target Tracking Method Based on Super-Resolution Reconstruction and Hybrid Networks.

Wan H, Xu S, Yang Y, Li Y J Imaging. 2025; 11(2).

PMID: 39997531 PMC: 11856348. DOI: 10.3390/jimaging11020029.


Unlocking Dreams and Dreamless Sleep: Machine Learning Classification With Optimal EEG Channels.

Moctezuma L, Molinas M, Abe T Biomed Res Int. 2025; 2025:3585125.

PMID: 39963589 PMC: 11832269. DOI: 10.1155/bmri/3585125.


Synergistic integration of brain networks and time-frequency multi-view feature for sleep stage classification.

Yang J, Wang Q, Dong X, Shen T Health Inf Sci Syst. 2025; 13(1):15.

PMID: 39802081 PMC: 11723870. DOI: 10.1007/s13755-024-00328-0.


Applications of Long Short-Term Memory (LSTM) Networks in Polymeric Sciences: A Review.

Malashin I, Tynchenko V, Gantimurov A, Nelyub V, Borodulin A Polymers (Basel). 2024; 16(18).

PMID: 39339070 PMC: 11435440. DOI: 10.3390/polym16182607.

References
1.
Lotte F, Bougrain L, Cichocki A, Clerc M, Congedo M, Rakotomamonjy A . A review of classification algorithms for EEG-based brain-computer interfaces: a 10 year update. J Neural Eng. 2018; 15(3):031005. DOI: 10.1088/1741-2552/aab2f2. View

2.
Goldberger A, Amaral L, Glass L, Hausdorff J, Ivanov P, Mark R . PhysioBank, PhysioToolkit, and PhysioNet: components of a new research resource for complex physiologic signals. Circulation. 2000; 101(23):E215-20. DOI: 10.1161/01.cir.101.23.e215. View

3.
Quan S, Howard B, Iber C, Kiley J, Nieto F, OConnor G . The Sleep Heart Health Study: design, rationale, and methods. Sleep. 1998; 20(12):1077-85. View

4.
Mousavi S, Afghah F, Rajendra Acharya U . SleepEEGNet: Automated sleep stage scoring with sequence to sequence deep learning approach. PLoS One. 2019; 14(5):e0216456. PMC: 6504038. DOI: 10.1371/journal.pone.0216456. View

5.
Contreras D, Destexhe A, Sejnowski T, Steriade M . Spatiotemporal patterns of spindle oscillations in cortex and thalamus. J Neurosci. 1997; 17(3):1179-96. PMC: 6573181. View