Automated detection of Alzheimer disease using MRI images and deep
neural networks- A review
- URL: http://arxiv.org/abs/2209.11282v1
- Date: Thu, 22 Sep 2022 19:28:59 GMT
- Title: Automated detection of Alzheimer disease using MRI images and deep
neural networks- A review
- Authors: Narotam Singh, Patteshwari.D, Neha Soni and Amita Kapoor
- Abstract summary: Early detection of Alzheimer disease is crucial for deploying interventions and slowing the disease progression.
A lot of machine learning and deep learning algorithms have been explored in the past decade with the aim of building an automated detection for Alzheimer.
- Score: 0.0
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Early detection of Alzheimer disease is crucial for deploying interventions
and slowing the disease progression. A lot of machine learning and deep
learning algorithms have been explored in the past decade with the aim of
building an automated detection for Alzheimer. Advancements in data
augmentation techniques and advanced deep learning architectures have opened up
new frontiers in this field, and research is moving at a rapid speed. Hence,
the purpose of this survey is to provide an overview of recent research on deep
learning models for Alzheimer disease diagnosis. In addition to categorizing
the numerous data sources, neural network architectures, and commonly used
assessment measures, we also classify implementation and reproducibility. Our
objective is to assist interested researchers in keeping up with the newest
developments and in reproducing earlier investigations as benchmarks. In
addition, we also indicate future research directions for this topic.
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