MCL Research on EEG Data Analysis
Our work starts with a simple idea: the way different brain regions communicate can reveal a lot about what the brain is doing. Instead of treating EEG as a collection of separate channels, we view it as a network and study the connectivity patterns between regions. This kind of representation is useful because different brain states often produce different connectivity structures. In other words, brain connectivity maps can provide a more intuitive and informative picture of neural activity than raw signals alone.
In one of our studies, we use the direct Directed Transfer Function (dDTF) to build these maps. A key advantage of dDTF is that it captures not only whether two brain regions are related, but also the direction of information flow between them. This makes it a good tool for describing dynamic interactions in the brain. In particular, these connectivity patterns for mental workload show clear differences across conditions. As illustrated in Fig. 2, low and high workload states already present visibly different connectivity maps across several frequency bands, suggesting that they contain meaningful information for distinguishing cognitive states.
Based on this observation, we developed the framework shown in Fig. 1. We first decompose the EEG signals into multiple frequency bands and construct a connectivity map for each band. These multiband maps are then combined into a unified feature representation. From there, we progressively refine the features, selecting the most informative ones and transforming them into a more discriminative space before making the final prediction. In this way, our method leverages interpretable brain connectivity patterns while keeping the overall learning pipeline efficient, practical, and easy to extend to other EEG analysis tasks.









