학술논문

Clinical Validation of the Champagne Algorithm for Epilepsy Spike Localization.
Document Type
article
Source
Subject
brain source imaging
brain source localization
epilepsy
magnetoencephalography
source imaging analysis
source localization
spike analysis
Neurodegenerative
Clinical Research
Epilepsy
Neurosciences
Brain Disorders
2.1 Biological and endogenous factors
Neurological
Experimental Psychology
Psychology
Cognitive Sciences
Language
Abstract
Magnetoencephalography (MEG) is increasingly used for presurgical planning in people with medically refractory focal epilepsy. Localization of interictal epileptiform activity, a surrogate for the seizure onset zone whose removal may prevent seizures, is challenging and depends on the use of multiple complementary techniques. Accurate and reliable localization of epileptiform activity from spontaneous MEG data has been an elusive goal. One approach toward this goal is to use a novel Bayesian inference algorithm-the Champagne algorithm with noise learning-which has shown tremendous success in source reconstruction, especially for focal brain sources. In this study, we localized sources of manually identified MEG spikes using the Champagne algorithm in a cohort of 16 patients with medically refractory epilepsy collected in two consecutive series. To evaluate the reliability of this approach, we compared the performance to equivalent current dipole (ECD) modeling, a conventional source localization technique that is commonly used in clinical practice. Results suggest that Champagne may be a robust, automated, alternative to manual parametric dipole fitting methods for localization of interictal MEG spikes, in addition to its previously described clinical and research applications.