Title
Early detection of human focal seizures based on cortical multiunit activity.
Abstract
Approximately 50 million people in the world suffer from epileptic seizures. Reliable early seizure detection could bring significantly beneficial therapeutic alternatives. In recent decades, most approaches have relied on scalp EEG and intracranial EEG signals, but practical early detection for closed-loop seizure control remains challenging. In this study, we present preliminary analyses of an early detection approach based on intracortical neuronal multiunit activity (MUA) recorded from a 96-microelectrode array (MEA). The approach consists of (1) MUA detection from broadband field potentials recorded at 30 kHz by the MEA; (2) MUA feature extraction; (3) cost-sensitive support vector machine classification of ictal and interictal samples; and (4) Kalman-filtering postprocessing. MUA was here defined as the number of threshold crossing (spike counts) applied to the 300 Hz-6 kHz bandpass filtered local field potentials in 0.1 sec time windows. MUA features explored in this study included the mean, variance, and Fano-factor, computed across the MEA channels. In addition, we used the leading eigenvalues of MUA spatial and temporal correlation matrices computed in 1-sec moving time windows. We assessed the seizure detection approach on out-of-sample data from one-participant recordings with six seizure events and 4.73-hour interictal data. The proposed MUA-based detection approach yielded a 100% sensitivity (6/6) and no false positives, and a latency of 4.17 ± 2.27 sec (mean ± SD) with respect to ECoG-identified seizure onsets. These preliminary results indicate intracortical MUA may be a useful signal for early detection of human epileptic seizures.
Year
DOI
Venue
2014
10.1109/EMBC.2014.6944945
EMBC
Keywords
DocType
Volume
eigenvalues,mua spatial correlation matrices,interictal samples,medical disorders,medical signal detection,kalman-filtering postprocessing,kalman filters,neurophysiology,fano-factor,human focal seizure detection,bandpass filtered local field potentials,broadband field potentials,microelectrode array,cortical multiunit activity,ecog-identified seizure onsets,mua feature extraction,feature extraction,intracortical neuronal multiunit activity,mua detection,support vector machine classification,mua temporal correlation matrices,microelectrodes,eigenvalues and eigenfunctions,support vector machines,band-pass filters
Conference
2014
ISSN
Citations 
PageRank 
1557-170X
0
0.34
References 
Authors
0
5
Name
Order
Citations
PageRank
Yun Park1103.75
Leigh R. Hochberg2264.98
Emad N Eskandar331.12
Sydney S. Cash42010.14
Wilson Truccolo56412.78