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      Quickest detection of drug-resistant seizures: An optimal control approach

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          Abstract

          Epilepsy affects 50 million people worldwide, and seizures in 30% of the cases remain drug resistant. This has increased interest in responsive neurostimulation, which is most effective when administered during seizure onset. We propose a novel framework for seizure onset detection that involves (i) constructing statistics from multichannel intracranial EEG (iEEG) to distinguish nonictal versus ictal states; (ii) modeling the dynamics of these statistics in each state and the state transitions; you can remove this word if there is no room. (iii) developing an optimal control-based “quickest detection” (QD) strategy to estimate the transition times from nonictal to ictal states from sequential iEEG measurements. The QD strategy minimizes a cost function of detection delay and false positive probability. The solution is a threshold that non-monotonically decreases over time and avoids responding to rare events that normally trigger false positives. We applied QD to four drug resistant epileptic patients (168 hour continuous recordings, 26–44 electrodes, 33 seizures) and achieved 100% sensitivity with low false positive rates (0.16 false positive/hour). This article is part of a Supplemental Special Issue entitled The Future of Automated Seizure Detection and Prediction.

          Highlights

          ► A control-theoretical framework for automatic online seizure detection is proposed. ► This framework combines iEEGs, network-based statistics, and optimization tools. ► The detection algorithm minimizes detection delays and probability of false alarms. ► Reported results show 100% sensitivity and low false positive rates.

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          On Optimum Methods in Quickest Detection Problems

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            Assessing seizure dynamics by analysing the correlation structure of multichannel intracranial EEG.

            Epileptic seizures are commonly characterized as 'hypersynchronous states'. This habit is doubly misleading, because seizures are not necessarily synchronous and are not unchanging 'states' but dynamic processes. Here the temporal evolution of the correlation structure in the course of 100 focal onset seizures of 60 patients recorded by intracranial multichannel EEG was assessed. To this end a multivariate method was applied that at its core consists of computing the eigenvalue spectrum of the zero-lag correlation matrix of a short sliding window. Our results show that there are clearly observable and statistically significant changes of the correlation structure of focal onset seizures. Specifically, these changes indicate that the zero-lag correlation of multi-channel EEG either remains approximately unchanged or-especially in the case of secondary generalization-decreases during the first half of the seizures. Then correlation gradually increases again before the seizures terminate. This development was qualitatively independent of the anatomical location of the seizure onset zone and therefore seems to be a generic property of focal onset seizures. We suggest that the decorrelation of EEG activity is due to the different propagation times of locally synchronous ictal discharges from the seizure onset zone to other brain areas. Furthermore we speculate that the increase of correlation during the second half of the seizures may be causally related to seizure termination.
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              Automatic epileptic seizure detection in EEGs based on line length feature and artificial neural networks.

              About 1% of the people in the world suffer from epilepsy. The main characteristic of epilepsy is the recurrent seizures. Careful analysis of the electroencephalogram (EEG) recordings can provide valuable information for understanding the mechanisms behind epileptic disorders. Since epileptic seizures occur irregularly and unpredictably, automatic seizure detection in EEG recordings is highly required. Wavelet transform (WT) is an effective analysis tool for non-stationary signals, such as EEGs. The line length feature reflects the waveform dimensionality changes and is a measure sensitive to variation of the signal amplitude and frequency. This paper presents a novel method for automatic epileptic seizure detection, which uses line length features based on wavelet transform multiresolution decomposition and combines with an artificial neural network (ANN) to classify the EEG signals regarding the existence of seizure or not. To the knowledge of the authors, there exists no similar work in the literature. A famous public dataset was used to evaluate the proposed method. The high accuracy obtained for three different classification problems testified the great success of the method. (c) 2010 Elsevier B.V. All rights reserved.
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                Author and article information

                Journal
                Epilepsy Behav
                Epilepsy Behav
                Epilepsy & Behavior
                Academic Press
                1525-5050
                1525-5069
                December 2011
                December 2011
                : 22
                : 7-5
                : S49-S60
                Affiliations
                [a ]Department of Biomedical Engineering, Johns Hopkins University, Baltimore, MD, USA
                [b ]Department of Neurosurgery and Department of Radiology, Brigham and Women's Hospital, Boston, MA, USA
                [c ]Department of Ophthalmology and Neurology, Children's Hospital, Boston, MA, USA
                [d ]Department of Neurosurgery, Johns Hopkins Hospital, Baltimore, MD, USA
                Author notes
                [* ]Corresponding author at: Institute for Computational Medicine, Johns Hopkins University, Hackerman Hall 316c, Baltimore, MD 21218–2686, USA. Fax: + 1 410 516 5294. ssarma2@ 123456jhu.edu
                Article
                YEBEH2822
                10.1016/j.yebeh.2011.08.041
                3280702
                22078519
                c69cd8fc-15ac-49db-9b93-5100512d13a3
                © 2011 Elsevier Inc.

                This document may be redistributed and reused, subject to certain conditions.

                History
                : 22 August 2011
                : 29 August 2011
                Categories
                Article

                Clinical Psychology & Psychiatry
                multivariate analysis,quickest detection,dynamic programming,networks,optimal control,bayesian estimation,intracranial electroencephalogram,hidden markov model

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