WTD-PSD: Presentation of Novel Feature Extraction Method Based on Discrete Wavelet Transformation and Time-Dependent Power Spectrum Descriptors for Diagnosis of Alzheimer’s Disease

Author:

Taghavirashidizadeh Ali1ORCID,Sharifi Fatemeh2,Vahabi Seyed Amir3,Hejazi Aslan4,SaghabTorbati Mehrnaz5,Mohammed Amin Salih67

Affiliation:

1. Islamic Azad University, Central Tehran Branch (IAUCTB), Department of Electrical and Electronics Engineering, Tehran, Iran

2. Department of Electrical Engineering, University of Applied Science and Technology, Bushehr, Iran

3. Department of Computer Engineering, Deylaman Institute of Higher Education, Lahijan, Iran

4. Department of Electrical Engineering, Islamic Azad University, Science and Research Branch, Tehran, Iran

5. Department of Biomedical Engineering, Faculty of Electrical Engineering, Iran University of Science and Technology, Tehran, Iran

6. Department of Computer Engineering, College of Engineering and Computer Science, Lebanese French University, Erbil, Kurdistan Region, Iraq

7. Department of Software and Informatics Engineering, Salahaddin University, Erbil, Kurdistan Region, Iraq

Abstract

Alzheimer’s disease (AD) is a type of dementia that affects the elderly population. A machine learning (ML) system has been trained to recognize particular patterns to diagnose AD using an algorithm in an ML system. As a result, developing a feature extraction approach is critical for reducing calculation time. The input image in this article is a Two-Dimensional Discrete Wavelet (2D-DWT). The Time-Dependent Power Spectrum Descriptors (TD-PSD) model is used to represent the subbanded wavelet coefficients. The principal property vector is made up of the characteristics of the TD-PSD model. Based on classification algorithms, the collected characteristics are applied independently to present AD classifications. The categorization is used to determine the kind of tumor. The TD-PSD method was used to extract wavelet subbands features from three sets of test samples: moderate cognitive impairment (MCI), AD, and healthy controls (HC). The outcomes of three modes of classic classification methods, including KNN, SVM, Decision Tree, and LDA approaches, are documented, as well as the final feature employed in each. Finally, we show the CNN architecture for AD patient classification. Output assessment is used to show the results. Other techniques are outperformed by the given CNN and DT.

Publisher

Hindawi Limited

Subject

General Mathematics,General Medicine,General Neuroscience,General Computer Science

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