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Home / Archives / Volume-3 / Issue-4 / Article-7

Volume - 3 | Issue - 4 | december 2021

Automatic Diagnosis of Alzheimer’s disease using Hybrid Model and CNN
Pages: 322-335
DOI
10.36548/jscp.2021.4.007
Published
17 January, 2022
Abstract

Since the past decade, the deep learning techniques are widely used in research. The objective of various applications is achieved using these techniques. The deep learning technique in the medical field helps to find medicines and diagnosis of diseases. The Alzheimer’s is a physical brain disease, on which recently many research are experimented to develop an efficient model that diagnoses the early stages of Alzheimer’s disease. In this paper, a Hybrid model is proposed, which is a combination of VGG19 with additional layers, and a CNN deep learning model for detecting and classifying the different stages of Alzheimer’s and the performance is compared with the CNN model. The Magnetic Resonance Images are used to analyse both models received from the Kaggle dataset. The result shows that the Hybrid model works efficiently in detecting and classifying the different stages of Alzheimer’s.

Keywords

Alzheimer's data preprocessing VGG19 CNN deep-learning

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