Detection of epileptic seizure in EEG signals using linear least squares preprocessing
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- @Article{Zamir:2016:CMPB,
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author = "Z. Roshan Zamir",
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title = "Detection of epileptic seizure in {EEG} signals using
linear least squares preprocessing",
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journal = "Computer Methods and Programs in Biomedicine",
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year = "2016",
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ISSN = "0169-2607",
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DOI = "doi:10.1016/j.cmpb.2016.05.002",
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URL = "http://www.sciencedirect.com/science/article/pii/S016926071530273X",
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abstract = "An epileptic seizure is a transient event of abnormal
excessive neuronal discharge in the brain. This
unwanted event can be obstructed by detection of
electrical changes in the brain that happen before the
seizure takes place. The automatic detection of
seizures is necessary since the visual screening of EEG
recordings is a time consuming task and requires
experts to improve the diagnosis. Much of the prior
research in detection of seizures has been developed
based on artificial neural network, genetic
programming, and wavelet transforms. Although the
highest achieved accuracy for classification is
100percent, there are drawbacks such as, existence of
unbalanced datasets and the lack of investigations in
performances consistency. To address these, four linear
least squares-based preprocessing models are proposed
to extract key features of an EEG signal in order to
detect seizures. The first two models are newly
developed. The original signal (EEG) is approximated by
a sinusoidal curve. Its amplitude is formed by a
polynomial function and compared with the pre developed
spline function. Different statistical measures namely
classification accuracy, true positive and negative
rates, false positive and negative rates and precision
are used to assess the performance of the proposed
models. These metrics are derived from confusion
matrices obtained from classifiers. Different
classifiers are used over the original dataset and the
set of extracted features. The proposed models
significantly reduce the dimension of the
classification problem and the computational time while
the classification accuracy is improved in most cases.
The first and third models are promising feature
extraction methods with the classification accuracy of
100percent. Logistic, LazyIB1, LazyIB5, and J48 are the
best classifiers. Their true positive and negative
rates are 1 while false positive and negative rates are
zero and the corresponding precision values are 1.
Numerical results suggest that these models are robust
and efficient for detecting epileptic seizure.",
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keywords = "genetic algorithms, genetic programming, Biological
signal classification, Signal approximation, Feature
extraction, Data analysis, Linear least squares
problems, EEG Seizure detection",
- }
Genetic Programming entries for
Z Roshan Zamir
Citations