The main objective of the course is to provide the students an introduction to the basics of Brain Computer Interfaces (BCI) principally based on oscillatory EEG activity, but also on transient EP and ERP signals. The course will introduce the main methods for acquiring and processing electrophysiological data allowing the decoding of brain activity in real time for converting it into BCI control signals. The practical activity will be based on the EEG/ERP lab located at the Dept. of Psychology, at University of Milano-Bicocca. Students will have the opportunity to visit the internationally reknown laboratory, gain hands-on experience in constructing signals for BCI systems and mind reading, develop their undergraduate theses, and complete a 200-hour internship, depending on their individual interests and goals.

Further aim will be to provide the students with basic understanding of neurological diseases, introducing the main clinical features, as well as their functional neurophysiological correlates.

Expected learning outcomes
The students are expected to:
- Acquire basic knowledge on the major neurological disease and their clinical features
- Know the basic neural substrates of neurophysiological signals, and their alterations
- Identify the main medical applications of AI algorithms in neurological diseases
- Acquire knowledge on the available AI tools to promote early diagnosis of neurodegenerative diseases
- Explore basic principles for applications to drug discovery
- Evaluate potential applications for neuro-rehabilitative interventions
- Acquire basic knowledge of the various oscillatory and transient electrical signals of the brain
- Know which electrical marker might be more appropriate for assessing minimally conscious state, for 'mind reading', or robotic control
- Explore available techniques for EEG-based BCI applications for motor control and augmented communication.