An efficient deep learning approach for detecting Alzheimer’s disease using brain images
Abstract
Alzheimer’s disease (AD) is a disorder of the brain which causes the loss of memory.
This is a successively growing disease which means the severity of it will be upward
with the time. In this century, AD is one of the major concerns in the medical
arena. The objective of our work is to improve a system that will be able to detect
the disease at an early stage. We used efficient deep learning for our project as
nowadays, deep learning plays a vital role in every research field. We used MRI
of brain for our project using which, our model can identify whether there is sign
of Alzheimer’s disease or not. Besides, our model is multiclass classification related
which means it can work on different stages of AD.We used different architectures of
Convolutional Neural Network (CNN) that are VGG-19, Inception V3 and ResNet-
101 and the accuracy we attained from our models are 88.02%, 89.62% and 91.49%
respectively which are pretty decent scores. Since it is an irreversible disorder, we
can perceive the significance of detecting the disease at an early stage with good
accuracy. Thus, we can state based on the performance of our models that these
might play some important role to detect AD.