Abstract:
Motor impairment after stroke is typically assessed using clinical observational scales. However, these scales are often prone to intrinsic variability and are time consu...Show MoreMetadata
Abstract:
Motor impairment after stroke is typically assessed using clinical observational scales. However, these scales are often prone to intrinsic variability and are time consuming to administer. Electroencephalography (EEG) may be a useful complementary approach to objectively assess motor impairment after stroke, provided that explanatory markers are extracted from the raw signals. The present work assesses the capability of several EEG metrics in discriminating levels of upper limb impairment in a cross-validated machine learning framework. EEG signals were recorded from 28 acute stroke survivors within 72 hours after the stroke, along with the motor sub-score of the Fugl-Meyer assessment scale of the upper extremity (FMAUE). We extracted 221 features from the spectral and connectivity domains of the EEG signals and selected the most predictive features based on two feature ranking algorithms (ReliefF and maximum relevance minimum redundancy). Combinations of the best-performing features were fed to a support vector machine classifier, optimizing its hyperparameters. The best-performing model achieved a cross-validated accuracy higher than 85% in classifying participants into high- and low-FMAUE. The brain symmetry index and its derivatives were the most important predictors of patients' motor status. This result will pave the way for EEG-based automatic scoring of motor impairment after stroke.
Date of Conference: 24-27 April 2023
Date Added to IEEE Xplore: 19 May 2023
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- IEEE Keywords
- Index Terms
- Machine Learning ,
- Upper Limb ,
- Acute Stroke ,
- Acute Stroke Patients ,
- Resting-state EEG ,
- EEG Markers ,
- Impairment In Stroke Patients ,
- Physical Disability ,
- Support Vector Machine ,
- EEG Signals ,
- Level Of Impairment ,
- Stroke Survivors ,
- Motion State ,
- Feature Ranking ,
- Machine Learning Framework ,
- Minimum Redundancy Maximum Relevance ,
- Training Set ,
- Acute Phase ,
- Classification Performance ,
- Motor Cortex ,
- Gamma Band ,
- Unaffected Hemisphere ,
- Clustering Coefficient ,
- Feature Selection Methods ,
- Independent Component Analysis ,
- EEG Activity ,
- EEG Recordings
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Machine Learning ,
- Upper Limb ,
- Acute Stroke ,
- Acute Stroke Patients ,
- Resting-state EEG ,
- EEG Markers ,
- Impairment In Stroke Patients ,
- Physical Disability ,
- Support Vector Machine ,
- EEG Signals ,
- Level Of Impairment ,
- Stroke Survivors ,
- Motion State ,
- Feature Ranking ,
- Machine Learning Framework ,
- Minimum Redundancy Maximum Relevance ,
- Training Set ,
- Acute Phase ,
- Classification Performance ,
- Motor Cortex ,
- Gamma Band ,
- Unaffected Hemisphere ,
- Clustering Coefficient ,
- Feature Selection Methods ,
- Independent Component Analysis ,
- EEG Activity ,
- EEG Recordings
- Author Keywords