A self-driven approach for multi-class discrimination in Alzheimer's disease based on wearable EEG

Computer Methods and Programs in Biomedicine - Tập 220 - Trang 106841 - 2022
Eduardo Perez-Valero1,2, Miguel Ángel Lopez-Gordo3,2, Christian Morillas Gutiérrez1,2, Ismael Carrera-Muñoz4, Rosa M. Vílchez-Carrillo4
1Department of Computer Architecture and Technology, University of Granada, Spain
2Brain-Computer Interfaces Laboratory, Research Centre for Information and Communications Technologies, University of Granada, Spain
3Department of Signal Theory, Telematics and Communications, University of Granada, Spain
4Cognitive Neurology Group, Neurology Unit, Hospital Universitario Virgen de las Nieves, Granada, Spain

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