Brain Dynamic
Brain dynamics research focuses on understanding the complex temporal and spatial patterns of neural activity underlying cognition and behavior. Current investigations utilize advanced machine learning models, including graph neural networks, transformers (like Swin Transformers and Continuous Spatiotemporal Transformers), and novel approaches such as Neural Integro-Differential Equations and Masked Autoencoders, to analyze diverse neuroimaging data (EEG, fMRI). These analyses aim to improve the accuracy of disease diagnosis (e.g., ADHD, epilepsy), predict cognitive states (e.g., drowsiness, working memory load), and ultimately reveal the causal mechanisms driving brain function, paving the way for more effective clinical interventions and brain-computer interfaces.
Papers
Neural Integro-Differential Equations
Emanuele Zappala, Antonio Henrique de Oliveira Fonseca, Andrew Henry Moberly, Michael James Higley, Chadi Abdallah, Jessica Cardin, David van Dijk
Classification of ADHD Patients Using Kernel Hierarchical Extreme Learning Machine
Sartaj Ahmed Salman, Zhichao Lian, Milad Taleby Ahvanooey, Hiroki Takahashi, Yuduo Zhang