Automated EMG-Based Classification of Upper Extremity Motor Impairment Levels in Subacute Stroke.
Alexey Anastasiev, Hideki Kadone, Aiki Marushima, Hiroki Watanabe, Alexander Zaboronok, Shinya Watanabe, Akira Matsumura, Kenji Suzuki, Yuji Matsumaru, Hiroyuki Nishiyama, Eiichi Ishikawa
Abstract
Open AccessRehabilitation of upper extremity (UE) impairments after stroke requires regular evaluation, with standard methods typically being time-consuming and relying heavily on manual assessment by therapists. In our study, we propose automating these assessments using electromyography (EMG) as a core indicator of muscle activity, correlating passive and active EMG signals with clinical motor impairment scores. UE motor function in 25 patients was evaluated using the Fugl-Meyer Assessment for UE (FMA-UE), the Modified Ashworth Scale (MAS), and the Brunnstrom Recovery Stages (BRS). EMG data were processed via feature extraction and linear discriminant analysis (LDA), with 10-fold cross-validation for binary classification based on clinical score thresholds. The LDA classifier accurately distinguished impairment categories, achieving area under the receiver operating characteristic curve (AUC-ROC) scores of 0.897 ± 0.272 for FMA-UE > 33, 0.981 ± 0.103 for FMA-UE > 44, 0.890 ± 0.262 for MAS > 0, 0.968 ± 0.130 for BRS > 3, and 0.987 ± 0.085 for BRS > 4. Notably, resting-state EMG alone yielded comparable classification performance. These findings demonstrate that EMG-driven assessments can reliably classify motor impairment levels, offering a pathway to objective clinical scoring that can streamline rehabilitation workflows, reduce therapists' manual burden, and prioritize patient recovery over assessment procedures.