Title
Deep Learning Representation From Electroencephalography Of Early-Stage Creutzfeldt-Jakob Disease And Features For Differentiation From Rapidly Progressive Dementia
Abstract
A novel technique of quantitative EEG for differentiating patients with early-stage Creutzfeldt-Jakob disease (CJD) from other forms of rapidly progressive dementia (RPD) is proposed. The discrimination is based on the extraction of suitable features from the time-frequency representation of the EEG signals through continuous wavelet transform (CWT). An average measure of complexity of the EEG signal obtained by permutation entropy (PE) is also included. The dimensionality of the feature space is reduced through a multilayer processing system based on the recently emerged deep learning (DL) concept. The DL processor includes a stacked auto-encoder, trained by unsupervised learning techniques, and a classifier whose parameters are determined in a supervised way by associating the known category labels to the reduced vector of high-level features generated by the previous processing blocks. The supervised learning step is carried out by using either support vector machines (SVM) or multilayer neural networks (MLP-NN). A subset of EEG from patients suffering from Alzheimer's Disease (AD) and healthy controls (HC) is considered for differentiating CJD patients. When fine-tuning the parameters of the global processing system by a supervised learning procedure, the proposed system is able to achieve an average accuracy of 89%, an average sensitivity of 92%, and an average specificity of 89% in differentiating CJD from RPD. Similar results are obtained for CJD versus AD and CJD versus HC.
Year
DOI
Venue
2017
10.1142/S0129065716500398
INTERNATIONAL JOURNAL OF NEURAL SYSTEMS
Keywords
Field
DocType
Alzheimer's disease, CJD, EEG, classification, SVM, deep learning, continuous wavelet transform, subacute encephalopathies, dementia
Feature vector,Pattern recognition,Computer science,Support vector machine,Supervised learning,Unsupervised learning,Artificial intelligence,Deep learning,Artificial neural network,Electroencephalography,Wavelet
Journal
Volume
Issue
ISSN
27
2
0129-0657
Citations 
PageRank 
References 
23
0.75
8
Authors
17