How does artificial intelligence contribute to iEEG research?
Julia Berezutskaya, Anne-Lise Saive, Karim Jerbi, Marcel van Gerven

TL;DR
This paper reviews how AI techniques are applied to intracranial EEG data, advancing neuroscience understanding and enabling long-term brain-computer interfaces for clinical and research purposes.
Contribution
It provides a comprehensive overview of AI applications in iEEG, highlighting methods for neuroscience research and neurotechnology development.
Findings
AI models help understand brain functions.
AI enhances brain-computer interface capabilities.
iEEG data quality supports advanced AI analysis.
Abstract
Artificial intelligence (AI) is a fast-growing field focused on modeling and machine implementation of various cognitive functions with an increasing number of applications in computer vision, text processing, robotics, neurotechnology, bio-inspired computing and others. In this chapter, we describe how AI methods can be applied in the context of intracranial electroencephalography (iEEG) research. IEEG data is unique as it provides extremely high-quality signals recorded directly from brain tissue. Applying advanced AI models to these data carries the potential to further our understanding of many fundamental questions in neuroscience. At the same time, as an invasive technique, iEEG lends itself well to long-term, mobile brain-computer interface applications, particularly for communication in severely paralyzed individuals. We provide a detailed overview of these two research…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Neonatal and fetal brain pathology · Functional Brain Connectivity Studies
