Some Insight Into Alzheimer’s Disease Progression
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Date
2024-06
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Publisher
Indian Statistical Institute, Kolkata
Abstract
Alzheimer’s disease is a neurodegenerative disease that affects a multitude of people
globally. It usually affects people of 60 yrs and older causing changes in the anatomy
of the brain.Subjects diagnosed with Alzheimer’s disease often gets to live for 5-10
yrs.This makes early and accurate detection of the disease of paramount importance
not only for the victim but to better understand disease progression in subjects. Over
the years with the advancement of machine learning and deep learning a number of
studies have come up to perform disease classification basis different biomarkers which
acts as indicators for disease progression. This paper presents a multi-modal study
that compares performances of machine learning and deep learning models on 2 sets of
inputs namely MRI and cognitive scores. It considers dataset from ADNI (Alzheimer
Disease Neuroimaging Initiative) which is a longitudinal multi centre study designed to
develop clinical, imaging, genetic and biochemical biomarkers for the early detection
and tracking of Alzheimer’s disease (AD) and performs multi-class classification of
subjects into 3 groups of CN(Normal Cognition), MCI(Mild Cognitive Impairment)
and AD(Alzheimer Disease). For the deep learning model classification using MRI the
study proposes use of a modified 2D-CNN that works with MRI scans. Contrary to
Deep Convolutional Neural Networks that outputs better accuracy at the cost of higher
execution times 2D-CNN performs faster at the cost of accuracy. In addition the study
also considers a mix of both forms as input i.e.features extracted from 2D-CNN and
cognitive scores to classify subjects basis machine learning models. This hybrid input
captures not only brain anatomical changes but also symptoms that manifest.
Description
Dissertation under the supervision of Dr. Kuntal Ghosh
Keywords
Alzheimer’s disease, CN(Normal Cognition), MCI(Mild Cognitive Impairment), 2D-CNN, Deep Convolutional Neural Networks
Citation
46p.
