TY - JOUR
T1 - LG-Sleep
T2 - Local and Global Temporal Dependencies for Mice Sleep Scoring
AU - Sartipi, Shadi
AU - Andersen, Mie
AU - Hauglund, Natalie
AU - Kjaerby, Celia
AU - Untiet, Verena
AU - Nedergaard, Maiken
AU - Cetin, Mujdat
N1 - Publisher Copyright:
© 2017 IEEE.
PY - 2025
Y1 - 2025
N2 - Efficiently identifying sleep stages is crucial for unraveling the intricacies of sleep in both preclinical and clinical research. The labor-intensive nature of manual sleep scoring, demanding substantial expertise, has prompted a surge of interest in automated alternatives. Sleep studies in mice play a significant role in understanding sleep patterns and disorders and underscore the need for robust scoring methodologies. In response, this letter introduces LG-Sleep, a novel subject-independent deep neural network architecture designed for mice sleep scoring through electroencephalogram (EEG) signals. LG-Sleep extracts local and global temporal transitions within EEG signals to categorize sleep data into three stages: wake, rapid eye movement (REM) sleep, and non-REM sleep. The model leverages local and global temporal information by employing time-distributed convolutional neural networks to discern local temporal transitions in EEG data. Subsequently, features derived from the convolutional filters traverse long short-term memory blocks, capturing global transitions over extended periods. Crucially, the model is optimized in an autoencoder-decoder fashion, facilitating generalization across distinct subjects and adapting to limited training samples. Experimental findings demonstrate superior performance of LG-Sleep compared to conventional deep neural networks. Moreover, the model exhibits good performance across different sleep stages even when tasked with scoring based on limited training samples.
AB - Efficiently identifying sleep stages is crucial for unraveling the intricacies of sleep in both preclinical and clinical research. The labor-intensive nature of manual sleep scoring, demanding substantial expertise, has prompted a surge of interest in automated alternatives. Sleep studies in mice play a significant role in understanding sleep patterns and disorders and underscore the need for robust scoring methodologies. In response, this letter introduces LG-Sleep, a novel subject-independent deep neural network architecture designed for mice sleep scoring through electroencephalogram (EEG) signals. LG-Sleep extracts local and global temporal transitions within EEG signals to categorize sleep data into three stages: wake, rapid eye movement (REM) sleep, and non-REM sleep. The model leverages local and global temporal information by employing time-distributed convolutional neural networks to discern local temporal transitions in EEG data. Subsequently, features derived from the convolutional filters traverse long short-term memory blocks, capturing global transitions over extended periods. Crucially, the model is optimized in an autoencoder-decoder fashion, facilitating generalization across distinct subjects and adapting to limited training samples. Experimental findings demonstrate superior performance of LG-Sleep compared to conventional deep neural networks. Moreover, the model exhibits good performance across different sleep stages even when tasked with scoring based on limited training samples.
KW - autoencodera-decoder
KW - electroencephalogram (EEG)
KW - long-short term memory (LSTM)
KW - Sensor applications
KW - sleep scoring
KW - temporal transition
U2 - 10.1109/LSENS.2024.3523427
DO - 10.1109/LSENS.2024.3523427
M3 - Journal article
AN - SCOPUS:85213700466
SN - 2475-1472
VL - 9
JO - IEEE Sensors Letters
JF - IEEE Sensors Letters
IS - 2
M1 - 6002404
ER -