Effects of a Brain-Computer Interface With Virtual Reality (VR) Neurofeedback: A Pilot Study in Chronic Stroke Patients
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Sook-Lei Liew | Athanasios Vourvopoulos | Meghan Neureither | Esther Jahng | Stéphanie Lefebvre | S. Lefebvre | S. Liew | A. Vourvopoulos | Octavio Marin Pardo | David Saldana | David Saldana | Meghan Neureither | Esther Jahng | Octavio Marín Pardo
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