Title of article :
Diagnosis of Alzheimer’s Disease by Time-Dependent Power Spectrum Descriptors and Convolutional Neural Network Using EEG Signal
Author/Authors :
Amini, Morteza Department of Cognitive Modeling - Institute for Cognitive Science Studies - Shahid Beheshti University - Tehran, Iran , Pedram, MirMohsen Department of Electrical and Computer Engineering - Faculty of Engineering - Kharazmi University - Tehran, Iran , Moradi, AliReza Department of Cognitive Psychology - Institute for Cognitive Science Studies Te-hran, Iran , Ouchani, Mahshad Shahid Beheshti University - Tehran, Iran
Abstract :
Using strategies that obtain biomarkers where early symptoms coincide, the early detection of Alzheimer’s disease and its
complications is essential. Electroencephalogram is a technology that allows thousands of neurons with equal spatial orientation
of the duration of cerebral cortex electrical activity to be registered by postsynaptic potential. Therefore, in this paper, the timedependent power spectrum descriptors are used to diagnose the electroencephalogram signal function from three groups: mild
cognitive impairment, Alzheimer’s disease, and healthy control test samples. The final feature used in three modes of traditional
classification methods is recorded: k-nearest neighbors, support vector machine, linear discriminant analysis approaches, and
documented results. Finally, for Alzheimer’s disease patient classification, the convolutional neural network architecture is
presented. The results are indicated using output assessment. For the convolutional neural network approach, the accurate
meaning of accuracy is 82.3%. 85% of mild cognitive impairment cases are accurately detected in-depth, but 89.1% of the
Alzheimer’s disease and 75% of the healthy population are correctly diagnosed. The presented convolutional neural network
outperforms other approaches because performance and the k-nearest neighbors’ approach is the next target. The linear
discriminant analysis and support vector machine were at the low area under the curve values.
Keywords :
Alzheimer’s , Time-Dependent , EEG , AD
Journal title :
Computational and Mathematical Methods in Medicine