Torus Graphs for Large Scale Neural Phase Analysis
Researchers have developed a new method called Torus Graphs (TG) to analyze phase relationships in neural signals, which can handle thousands of variables compared to previous limitations of around 100. This advancement allows for more comprehensive analysis of complex data like EEG and LFP recordings. The new approach also enables the creation of TG Hidden Markov Models for state-dependent coupling and autoregressive TGs for directional interactions, revealing dynamic phase patterns across different cognitive states. AI
IMPACT Enables more sophisticated analysis of neural data, potentially leading to new insights in neuroscience and brain-computer interfaces.