Abstracts

Predictive Value of Magnetoencephalography to Guide Intracranial Implant Strategy

Abstract number : 2.036
Submission category : 3. Neurophysiology / 3D. MEG
Year : 2021
Submission ID : 1825664
Source : www.aesnet.org
Presentation date : 12/5/2021 12:00:00 PM
Published date : Nov 22, 2021, 06:44 AM

Authors :
Adrish Anand, B.A. - Baylor College of Medicine; Ron Gadot - Baylor College of Medicine; Ricardo Najera - Baylor College of Medicine; David Smith - Baylor College of Medicine; Mohamed Hegazy - Baylor College of Medicine; Jay Gavvala - Baylor College of Medicine; Sameer Sheth - Baylor College of Medicine; Ben Shofty - Baylor College of Medicine

Rationale: Magnetoencephalography (MEG) is a useful component of a pre-surgical evaluation. Due to its high spatiotemporal resolution, MEG often provides nonredundant information to the clinician when forming hypotheses about the epileptogenic zone (EZ). With the increasing utilization of stereo-EEG (sEEG), MEG clusters are more commonly used as an sEEG electrode target. However, there are no pre-defined features of an MEG cluster that predict whether it is representative of intracranial EEG interictal or ictal activity, which limits optimal utilization of MEG in surgical planning. The aim of this study is to determine which MEG cluster characteristics are predictive of the ictal onset zone.

Methods: We retrospectively analyzed patients who had an MEG study since it became available at our center (2017-2021). Patients were included if they had a positive MEG prior to an sEEG evaluation. MEG dipoles and sEEG electrodes were reconstructed in the same coordinate space to calculate overlap between electrodes and MEG clusters, and to quantify MEG cluster characteristics. MEG cluster features including brain region, stability (degree to which dipoles are parallel), tightness (density of dipole distribution), and number of dipoles were included in a binary classifier to predict ictal and interictal activity.

Results: Across 39 included patients, 13% of sEEG electrodes sampled MEG clusters. In these contacts, there were higher rates of ictal (43.22% vs 17.36%, p< 0.001) and interictal activity (39.63% vs 18.93%, p< 0.001) compared to electrodes not sampling MEG clusters. For contacts sampling the MEG cluster, binary classification predicted ictal activity with 76.7% accuracy compared to 54.4% in shuffled data (c-statistic = 0.816), while interictal activity was predicted accurately at 68.2% compared to 57.8% in shuffled data (c-statistic = 0.672). Further analysis of individual characteristics showed that cluster stability contributed most to the model’s accuracy (c-statistic = 0.773), whereas tightness (c-statistic = 0.701) and number of spikes (c-statistic = 0.692) contributed to a lesser extent. Brain region (c-statistic = 0.553) was not predictive of ictal activity.
Neurophysiology