Javascript must be enabled to continue!
Graph representations of iEEG data for seizure detection with graph neural networks
View through CrossRef
ABSTRACT
Epilepsy is a neurological disorder that affects over 50 million individuals worldwide. Today, the gold-standard treatment for those who are drug resistant, meaning that symptoms cannot be controlled with medication, is to surgically remove the seizure onset zone (SOZ), the area of the brain believed to cause seizures: the main symptom of epilepsy. Unfortunately, around 50% of drug resistant patients are not resective candidates, which can be attributed in part to poor SOZ localization. SOZ localization is a complex and lengthy procedure, requiring visual inspection and manual processing by human experts that first need to localize and isolate seizure events. The intracranial electroencephalography (iEEG) is a tool that records electrophysiological activity of the inner brain at different regions and depths, and provides critical information on the SOZ. However, iEEG data processing methodologies are not standardized, and practice and resources vary across hospitals and clinics. To assist human experts with systematic processing of iEEG data, we propose a data processing pipeline that generates graph representations of iEEG data. We evaluate 9 different graph representations of publicly available iEEG data from 25 patients with epilepsy with a graph neural network model trained to detect seizures. Our results suggest that graph representations of iEEG data that leverage electrode and functional connectivity features are powerful data structures to analyze and interpret iEEG data in the context of epilepsy. We anticipate that our data pipeline that provides a systematic processing of neural data with graphs can integrate other data modalities like neuroimaging data. Moreover, methods used in the data pipeline have potentials to apply to other neurological disorders such as Parkinson’s disease or major depression disorder.
Title: Graph representations of iEEG data for seizure detection with graph neural networks
Description:
ABSTRACT
Epilepsy is a neurological disorder that affects over 50 million individuals worldwide.
Today, the gold-standard treatment for those who are drug resistant, meaning that symptoms cannot be controlled with medication, is to surgically remove the seizure onset zone (SOZ), the area of the brain believed to cause seizures: the main symptom of epilepsy.
Unfortunately, around 50% of drug resistant patients are not resective candidates, which can be attributed in part to poor SOZ localization.
SOZ localization is a complex and lengthy procedure, requiring visual inspection and manual processing by human experts that first need to localize and isolate seizure events.
The intracranial electroencephalography (iEEG) is a tool that records electrophysiological activity of the inner brain at different regions and depths, and provides critical information on the SOZ.
However, iEEG data processing methodologies are not standardized, and practice and resources vary across hospitals and clinics.
To assist human experts with systematic processing of iEEG data, we propose a data processing pipeline that generates graph representations of iEEG data.
We evaluate 9 different graph representations of publicly available iEEG data from 25 patients with epilepsy with a graph neural network model trained to detect seizures.
Our results suggest that graph representations of iEEG data that leverage electrode and functional connectivity features are powerful data structures to analyze and interpret iEEG data in the context of epilepsy.
We anticipate that our data pipeline that provides a systematic processing of neural data with graphs can integrate other data modalities like neuroimaging data.
Moreover, methods used in the data pipeline have potentials to apply to other neurological disorders such as Parkinson’s disease or major depression disorder.
Related Results
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Abstarct
Introduction
Isolated brain hydatid disease (BHD) is an extremely rare form of echinococcosis. A prompt and timely diagnosis is a crucial step in disease management. This ...
Diagnostic role of serum prolactin level in different kinds of seizure and seizure-like episode in children: A hospital-based study
Diagnostic role of serum prolactin level in different kinds of seizure and seizure-like episode in children: A hospital-based study
Background: Serum prolactin level has been previously used in distinguishing epileptic seizure from non-epileptic seizure, as prolactin level usually rises following an epileptic s...
Graph convolutional neural networks for 3D data analysis
Graph convolutional neural networks for 3D data analysis
(English) Deep Learning allows the extraction of complex features directly from raw input data, eliminating the need for hand-crafted features from the classical Machine Learning p...
Event-based seizure detection in human iEEG with neuromorphic hardware
Event-based seizure detection in human iEEG with neuromorphic hardware
Abstract
Background
Epilepsy is a neurological disorder that affects approximately 1% of the global population. The current met...
Robust Detection of Brain Stimulation Artifacts in iEEG Using Autoencoder-Generated Signals and ResNet Classification
Robust Detection of Brain Stimulation Artifacts in iEEG Using Autoencoder-Generated Signals and ResNet Classification
AbstractBackgroundIntracranial EEG (iEEG) is crucial for understanding brain function, but stimulation-induced noise complicates data interpretation. Traditional artifact detection...
Seizure dynamotype classification using non-invasive recordings
Seizure dynamotype classification using non-invasive recordings
Summary
Objective
Recently, a seizure classification approach derived from complex systems and nonlinear d...
Ictogenesis
Ictogenesis
*Michel Le Van Quyen, †Pascale Quilichini, †Yehezkel Ben‐Ari, †Christophe Bernard, and †Henri Gozlan ( *Neurodynamics Group, LENA‐CNRS UPR640, Hôpital de la Salpêtrière, Paris , an...
Optimal Graph Representations and Neural Networks for Seizure Detection Using Intracranial EEG Data
Optimal Graph Representations and Neural Networks for Seizure Detection Using Intracranial EEG Data
Abstract
In recent years, several machine-learning (ML) solutions have been proposed to solve the problems of seizure detection, seizure characterization, seizure p...

