An interpretable deep learning approach to detect Alzheimer using MRI images
Date
2023-01Publisher
Brac UniversityAuthor
Oni, Farhan AnzumHossain Sayem, Kazi Sazzad
Rahman, Mushfiqur
Kabir, Sanjida
Bhuiyan, Fardeen Yousuf
Metadata
Show full item recordAbstract
Alzheimer’s disease (AD) is a serious neurological condition that causes loss of long term memory, cognitive difficulties, disorientation, inconsistent behavior, and even tually death. Also, AD is caused by the destruction of brain cells that are responsible
for proper brain function. The main focus of our research is to provide an efficient
model for the rapid diagnosis of Alzheimer’s disease. In this research, we design
and demonstrate an interpretable deep-learning approach to detect Alzheimer’s us ing MRI images. For the experiment, brain MRIs are utilized, and by using this
data, the model is able to determine the disease. Additionally, this model is de signed based on multiclass classification (MildDemented, ModerateDemented, Non Demented, VeryMildDemented) for helping patients belonging to different phases
of Alzheimer’s disease. For this research, we experimented with four different ar chitectures of Convolutional Neural Networks. From the models, we obtained an
accuracy of 92.65% for VGG-19, 89.18% for DenseNet-169, 87.84% for ResNet-50
V2, and 80.10% for Inception V3. By comparing and contrasting the performance
of the models, the result can be improved by up to 92.65%, and it is decided to im plement the best-performing architecture (VGG19) into the system. Although there
was a lack of data and it was difficult to tell the difference between a brain suffering
from Alzheimer’s disease and a normal brain, the findings obtained revealed accu rate identification and categorization of Alzheimer’s disease and its phases. Lastly,
GradCam (Gradient-Weighted Class Activation Mapping) is implemented to make
the application of Explainable AI(XAI) apparent. Therefore, the proposed system
would enable the detection and interpretation of Alzheimer’s disease effectively.