Automated assessment for Alzheimer's disease diagnosis from MRI images: Meta‐heuristic assisted deep learning model

Alzheimer's disease (AD) is a widespread neurodegenerative disease that causes 60–80% of all dementias and has a large economic impact in developed countries. For early‐stage AD detection, volumetric measures of magnetic resonance imaging (MRI) have proven to be a benchmark method. To detect po...

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Veröffentlicht in:International journal of imaging systems and technology 2022-03, Vol.32 (2), p.544-563
Hauptverfasser: Babu, G. Stalin, Rao, S. N. Tirumala, Rao, R. Rajeswara
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Rao, S. N. Tirumala
Rao, R. Rajeswara
description Alzheimer's disease (AD) is a widespread neurodegenerative disease that causes 60–80% of all dementias and has a large economic impact in developed countries. For early‐stage AD detection, volumetric measures of magnetic resonance imaging (MRI) have proven to be a benchmark method. To detect potential cases, existing methods combine health records, neuropsychological testing, and MRI, although learning implementation is inconsistently used and has low sensitivity and specificity. Furthermore, numerous classification approaches for diagnosing AD have been suggested with differing complexity. Thus, we have introduced our novel AD diagnosis model with two main phases such as proposed feature extraction and classification. In the first phase, the gray‐level co‐occurrence matrix (GLCM), Haralick features as well as proposed geometric Haralick features known as geometric correlation and variance are extracted. In the second phase, an optimized deep convolutional neural network (DCNN) is utilized for classification. To make the prediction more accurate, the weight and the activation function of DCNN are optimally chosen by a new hybrid model termed as Combined Gray Wolf and Dragon Updating (CG‐DU). At last, the superiority of the adopted scheme is validated in terms of performance analysis, convergence analysis, box plot analysis, and computation time analysis. Especially, the proposed model achieves a mean accuracy of 0.98795, sensitivity of 0.98671, and specificity of 0.99429. Moreover, the computation time of the CG‐DU model is 2.92%, and 0.14% superior to existing GWO and DA methods respectively.
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subjects Alzheimer disease
Alzheimer's disease
Artificial neural networks
CG‐DU algorithm
Classification
Computing time
DCNN
Deep learning
Diagnosis
Economic impact
Feature extraction
geometric Haralick
gray wolf optimizer
Impact analysis
Machine learning
Magnetic resonance imaging
Sensitivity
title Automated assessment for Alzheimer's disease diagnosis from MRI images: Meta‐heuristic assisted deep learning model
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