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@article{186181,
author = {Atul Rajendra Bodke and Nitin Dnyaneshwar Palve and Sudeep Santosh Avhad and Mayur Sanjay Aher and Priyanka Narode},
title = {MindCareAI-Alzheimer’s Disease Detection from Scan Using Machine Learning with Chatbot and Hospital Integration},
journal = {International Journal of Innovative Research in Technology},
year = {2025},
volume = {12},
number = {6},
pages = {1754-1758},
issn = {2349-6002},
url = {https://ijirt.org/article?manuscript=186181},
abstract = {Alzheimer's disease is an unrepairable degenerative brain disease. Every four seconds, someone in the world is diagnosed with Alzheimer's disease. The result is fatal, as it leads to death. As a result, it's crucial to catch the disease early on. The leading cause of dementia is Alzheimer's disease. Dementia causes a reduction in reasoning abilities and interpersonal coping skills, which affects people's ability to function independently. The patient will forget recent events in the early stages. If the illness progresses, they will gradually forget whole events. It is essential to diagnose the disease as soon as possible. This paper proposes a model that takes brain MRI sample images as input and determines whether a person has mild, moderate, or no Alzheimer's disease as an output. We are using the VGG19 and DenseNet169 architectures for this classification, providing a comparative analysis of which architecture shows promising results.},
keywords = {Alzheimer's, MRI images, VGG19, CNN DenseNet.},
month = {November},
}
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