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Journal ArticleDOI

Analysis of High-Dimensional Phase Space via Poincaré Section for Patient-Specific Seizure Detection

TLDR
A novel patient-specific seizure detection approach is proposed based on the dynamics of EEG signals and the proposed approach achieved 88.27% sensitivity and 93.21% specificity on average with 25% training data.
Abstract
In this paper, the performance of the phase space representation in interpreting the underlying dynamics of epileptic seizures is investigated and a novel patient-specific seizure detection approach is proposed based on the dynamics of EEG signals. To accomplish this, the trajectories of seizure and nonseizure segments are reconstructed in a high dimensional space using time-delay embedding method. Afterwards, Principal Component Analysis (PCA) was used in order to reduce the dimension of the reconstructed phase spaces. The geometry of the trajectories in the lower dimensions is then characterized using Poincare section and seven features were extracted from the obtained intersection sequence. Once the features are formed, they are fed into a two-layer classification scheme, comprising the Linear Discriminant Analysis (LDA) and Naive Bayesian classifiers. The performance of the proposed method is then evaluated over the CHB-MIT benchmark database and the proposed approach achieved 88.27% sensitivity and 93.21% specificity on average with 25% training data. Finally, we perform comparative performance evaluations against the state-of-the-art methods in this domain which demonstrate the superiority of the proposed method.

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Citations
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Journal ArticleDOI

A Multivariate Approach for Patient-Specific EEG Seizure Detection Using Empirical Wavelet Transform

TL;DR: Efficient detection of epileptic seizure is achieved when seizure events appear for long duration in hours long EEG recordings and the proposed method develops time–frequency plane for multivariate signals and builds patient-specific models for EEG seizure detection.
Journal ArticleDOI

Applying Deep Learning for Epilepsy Seizure Detection and Brain Mapping Visualization

TL;DR: The deep learning model is able to extract spectral, temporal features from EEG epilepsy data and use them to learn the general structure of a seizure that is less sensitive to variations, and can be used as an excellent cross-patient seizure classifier.
Journal ArticleDOI

Epileptic Seizure Detection in EEG Signals Using a Unified Temporal-Spectral Squeeze-and-Excitation Network

TL;DR: Competitive experimental results on three EEG datasets against the state-of-the-art methods demonstrate the effectiveness of the proposed framework in recognizing epileptic EEGs, indicating its powerful capability in the automatic seizure detection.
Journal ArticleDOI

Deep Multi-View Feature Learning for EEG-Based Epileptic Seizure Detection

TL;DR: Experimental studies show that the classification accuracy of the proposed multi-view deep feature extraction method is at least 1% higher than that of common feature extraction methods such as principal component analysis (PCA), FFT and WPD.
Journal ArticleDOI

Detecting Abnormal Pattern of Epileptic Seizures via Temporal Synchronization of EEG Signals

TL;DR: The approach validates the increased temporal synchronization in epileptic EEG and achieves a comparable detection performance to previous studies, which enable a patient-specific approach for real-time seizure detection for personalized diagnosis and treatment.
References
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Journal ArticleDOI

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TL;DR: The newly inaugurated Research Resource for Complex Physiologic Signals (RRSPS) as mentioned in this paper was created under the auspices of the National Center for Research Resources (NCR Resources).
Journal ArticleDOI

Measuring the Strangeness of Strange Attractors

TL;DR: In this paper, the correlation exponent v is introduced as a characteristic measure of strange attractors which allows one to distinguish between deterministic chaos and random noise, and algorithms for extracting v from the time series of a single variable are proposed.
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Nonlinear dynamical analysis of EEG and MEG: Review of an emerging field

TL;DR: Interpretation of results in terms of 'functional sources' and 'functional networks' allows the identification of three basic patterns of brain dynamics: normal, ongoing dynamics during a no-task, resting state in healthy subjects, and hypersynchronous, highly nonlinear dynamics of epileptic seizures and degenerative encephalopathies.
Journal ArticleDOI

Entropies for detection of epilepsy in EEG

TL;DR: The results obtained indicate that entropy estimators can distinguish normal and epileptic EEG data with more than 95% confidence (using t-test), and the classification ability of the entropy measures is tested using ANFIS classifier.
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