Brain Electroencephalography
Electroencephalography (EEG) measures brain electrical activity, offering a non-invasive method for studying brain function and diagnosing neurological and psychological conditions. Current research heavily utilizes deep learning models, including convolutional neural networks (CNNs), recurrent neural networks (RNNs), transformers, and variational autoencoders (VAEs), often coupled with techniques like transfer learning, self-supervised learning, and feature fusion to improve accuracy and address challenges such as data scarcity and noise. These advancements are enabling more precise diagnoses of conditions like Alzheimer's disease, epilepsy, and anxiety disorders, as well as applications in brain-computer interfaces and real-time monitoring of cognitive states like fatigue and workload. The field is also focusing on improving the interpretability of these complex models to enhance clinical utility and trust.
Papers
DREAMS: A python framework to train deep learning models with model card reporting for medical and health applications
Rabindra Khadka, Pedro G Lind, Anis Yazidi, Asma Belhadi
A Survey of Spatio-Temporal EEG data Analysis: from Models to Applications
Pengfei Wang, Huanran Zheng, Silong Dai, Yiqiao Wang, Xiaotian Gu, Yuanbin Wu, Xiaoling Wang