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Artifact detection and localization in single-channel mobile EEG for sleep research using deep learning and attention mechanisms

11 April 2025
Khrystyna Semkiv
Jia Zhang
Maria Laura Ferster
W. Karlen
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Abstract

Artifacts in the electroencephalogram (EEG) degrade signal quality and impact the analysis of brain activity. Current methods for detecting artifacts in sleep EEG rely on simple threshold-based algorithms that require manual intervention, which is time-consuming and impractical due to the vast volume of data that novel mobile recording systems generate. We propose a convolutional neural network (CNN) model incorporating a convolutional block attention module (CNN-CBAM) to detect and identify the location of artifacts in the sleep EEG with attention maps. We benchmarked this model against six other machine learning and signal processing approaches. We trained/tuned all models on 72 manually annotated EEG recordings obtained during home-based monitoring from 18 healthy participants with a mean (SD) age of 68.05 y (±\pm±5.02). We tested them on 26 separate recordings from 6 healthy participants with a mean (SD) age of 68.33 y (±\pm±4.08), with contained artifacts in 4\% of epochs. CNN-CBAM achieved the highest area under the receiver operating characteristic curve (0.88), sensitivity (0.81), and specificity (0.86) when compared to the other approaches. The attention maps from CNN-CBAM localized artifacts within the epoch with a sensitivity of 0.71 and specificity of 0.67. This work demonstrates the feasibility of automating the detection and localization of artifacts in wearable sleep EEG.

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@article{semkiv2025_2504.08469,
  title={ Artifact detection and localization in single-channel mobile EEG for sleep research using deep learning and attention mechanisms },
  author={ Khrystyna Semkiv and Jia Zhang and Maria Laura Ferster and Walter Karlen },
  journal={arXiv preprint arXiv:2504.08469},
  year={ 2025 }
}
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