Wearable technology in stroke rehabilitation: towards improved diagnosis and treatment of upper-limb motor impairment
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Pablo Maceira-Elvira | Friedhelm C. Hummel | F. Hummel | Traian Popa | A. Schmid | Traian Popa | Anne-Christine Schmid | Pablo Maceira-Elvira | P. Maceira-Elvira
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