Title of article :
Cross-Subject Seizure Detection in EEGs Using Deep Transfer Learning
Author/Authors :
Zhang, Baocan Jimei University - Xiamen, China , Wang, Wennan City University of Macau - Macau, China , Xiao, Yutian School of Informatics - Xiamen University - Xiamen, China , Xiao, Shixiao Jimei University - Xiamen, China , Chen, Shuaichen School of Informatics - Xiamen University - Xiamen, China , Chen, Sirui School of Electronics and Information Engineering - Tongji University - Shanghai, China , Xu, Gaowei School of Electronics and Information Engineering - Tongji University - Shanghai, China , Che, Wenliang Department of Cardiology - Shanghai Tenth People’s Hospital - Tongji University School of Medicine - Shanghai, China
Abstract :
Electroencephalography (EEG) plays an import role in monitoring the brain activities of patients with epilepsy and has been
extensively used to diagnose epilepsy. Clinically reading tens or even hundreds of hours of EEG recordings is very time
consuming. Therefore, automatic detection of seizure is of great importance. But the huge diversity of EEG signals belonging to
different patients makes the task of seizure detection much challenging, for both human experts and automation methods. We
propose three deep transfer convolutional neural networks (CNN) for automatic cross-subject seizure detection, based on
VGG16, VGG19, and ResNet50, respectively. The original dataset is the CHB-MIT scalp EEG dataset. We use short time
Fourier transform to generate time-frequency spectrum images as the input dataset, while positive samples are augmented due
to the infrequent nature of seizure. The model parameters pretrained on ImageNet are transferred to our models. and the finetuned top layers, with an output layer of two neurons for binary classification (seizure or nonseizure), are trained from scratch.
Then, the input dataset are randomly shuffled and divided into three partitions for training, validating, and testing the deep
transfer CNNs, respectively. The average accuracies achieved by the deep transfer CNNs based on VGG16, VGG19, and
ResNet50 are 97.75%, 98.26%, and 96.17% correspondingly. On those results of experiments, our method could prove to be an
effective method for cross-subject seizure detection.
Keywords :
Cross-Subject , EEG , Electroencephalography , Deep , CNN
Journal title :
Computational and Mathematical Methods in Medicine