A Generative Model to Synthesize EEG Data for Epileptic Seizure
Prediction
- URL: http://arxiv.org/abs/2012.00430v1
- Date: Tue, 1 Dec 2020 12:00:36 GMT
- Title: A Generative Model to Synthesize EEG Data for Epileptic Seizure
Prediction
- Authors: Khansa Rasheed, Junaid Qadir, Terence J.O'Brien, Levin Kuhlmann, Adeel
Razi
- Abstract summary: This paper proposes a deep convolutional generative adversarial network to generate synthetic EEG samples.
We use two methods to validate synthesized data namely, one-class SVM and a new proposal which we refer to as convolutional epileptic seizure predictor (CESP)
Our results show that CESP model achieves sensitivity of 78.11% and 88.21%, and FPR of 0.27/h and 0.14/h for training on synthesized data.
- Score: 3.8271082752302137
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Prediction of seizure before they occur is vital for bringing normalcy to the
lives of patients. Researchers employed machine learning methods using
hand-crafted features for seizure prediction. However, ML methods are too
complicated to select the best ML model or best features. Deep Learning methods
are beneficial in the sense of automatic feature extraction. One of the
roadblocks for accurate seizure prediction is scarcity of epileptic seizure
data. This paper addresses this problem by proposing a deep convolutional
generative adversarial network to generate synthetic EEG samples. We use two
methods to validate synthesized data namely, one-class SVM and a new proposal
which we refer to as convolutional epileptic seizure predictor (CESP). Another
objective of our study is to evaluate performance of well-known deep learning
models (e.g., VGG16, VGG19, ResNet50, and Inceptionv3) by training models on
augmented data using transfer learning with average time of 10 min between true
prediction and seizure onset. Our results show that CESP model achieves
sensitivity of 78.11% and 88.21%, and FPR of 0.27/h and 0.14/h for training on
synthesized and testing on real Epilepsyecosystem and CHB-MIT datasets,
respectively. Effective results of CESP trained on synthesized data shows that
synthetic data acquired the correlation between features and labels very well.
We also show that employment of idea of transfer learning and data augmentation
in patient-specific manner provides highest accuracy with sensitivity of 90.03%
and 0.03 FPR/h which was achieved using Inceptionv3, and that augmenting data
with samples generated from DCGAN increased prediction results of our CESP
model and Inceptionv3 by 4-5% as compared to state-of-the-art traditional
augmentation techniques. Finally, we note that prediction results of CESP
achieved by using augmented data are better than chance level for both
datasets.
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