Participant-specific classifier tuning increases the performance of hand movement detection from EEG in patients with amyotrophic lateral sclerosis
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D. Farina | S. Došen | N. Mrachacz‐Kersting | J. Blicher | S. Aliakbaryhosseinabadi | A. Savić | Susan Aliakbaryhosseinabadi
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