Title of article :
An Epilepsy Detection Method Using Multiview Clustering Algorithm and Deep Features.
Author/Authors :
Zhan, Qianyi School of Artificial Intelligence and Computer Science - Jiangnan University - Wuxi, China , Hu, Wei Department of Nuclear Medicine - Nanjing Medical University - Affiliated Wuxi People’s Hospital - Wuxi, China
Abstract :
The automatic detection of epilepsy is essentially the classification of EEG signals of seizures and nonseizures, and its purpose is to
distinguish the different characteristics of seizure brain electrical signals and normal brain electrical signals. In order to improve the
effect of automatic detection, this study proposes a new classification method based on unsupervised multiview clustering results. In
addition, considering the high-dimensional characteristics of the original data samples, a deep convolutional neural network
(DCNN) is introduced to extract the sample features to obtain deep features. The deep feature reduces the sample dimension
and increases the sample separability. The main steps of our proposed novel EEG detection method contain the following three
steps: first, a multiview FCM clustering algorithm is introduced, and the training samples are used to train the center and weight
of each view. Then, the class center and weight of each view obtained by training are used to calculate the view-weighted
membership value of the new prediction sample. Finally, the classification label of the new prediction sample is obtained.
Experimental results show that the proposed method can effectively detect seizures.
Keywords :
Multiview , Algorithm , Deep , EEG
Journal title :
Computational and Mathematical Methods in Medicine