Real-Time Non-Invasive Imaging and Detection of Spreading Depolarizations through EEG: An Ultra-Light Explainable Deep Learning Approach
Yinzhe Wu, Sharon Jewell, Xiaodan Xing, Yang Nan, Anthony J. Strong, Guang Yang, Martyn G. Boutelle

TL;DR
This paper introduces a fast, non-invasive EEG-based deep learning method for real-time detection of spreading depolarizations, improving early brain injury prognosis with enhanced accuracy and ultra-low-density EEG compatibility.
Contribution
It presents a novel ultra-lightweight multi-modal deep learning model that fuses EEG spectrograms and power vectors for accurate SD detection on variable electrode configurations.
Findings
Model processes data in under 0.3 seconds, enabling real-time detection.
Spectrogram frequency features improve SD detection accuracy.
Method outperforms traditional approaches that take hours.
Abstract
A core aim of neurocritical care is to prevent secondary brain injury. Spreading depolarizations (SDs) have been identified as an important independent cause of secondary brain injury. SDs are usually detected using invasive electrocorticography recorded at high sampling frequency. Recent pilot studies suggest a possible utility of scalp electrodes generated electroencephalogram (EEG) for non-invasive SD detection. However, noise and attenuation of EEG signals makes this detection task extremely challenging. Previous methods focus on detecting temporal power change of EEG over a fixed high-density map of scalp electrodes, which is not always clinically feasible. Having a specialized spectrogram as an input to the automatic SD detection model, this study is the first to transform SD identification problem from a detection task on a 1-D time-series wave to a task on a sequential 2-D…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Neural dynamics and brain function · Neuroscience and Neural Engineering
MethodsFocus · SPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
