Parkinson's Disease Detection Using Ensemble Architecture from MR Images
- URL: http://arxiv.org/abs/2007.00682v1
- Date: Wed, 1 Jul 2020 18:03:23 GMT
- Title: Parkinson's Disease Detection Using Ensemble Architecture from MR Images
- Authors: Tahjid Ashfaque Mostafa, Irene Cheng
- Abstract summary: We explore various approaches to identify Parkinson's using Magnetic Resonance (MR) T1 images of the brain.
We find that detection accuracy increases drastically when we focus on the Gray Matter (GM) and White Matter (WM) regions from the MR images.
- Score: 1.8884278918443564
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Parkinson's Disease(PD) is one of the major nervous system disorders that
affect people over 60. PD can cause cognitive impairments. In this work, we
explore various approaches to identify Parkinson's using Magnetic Resonance
(MR) T1 images of the brain. We experiment with ensemble architectures
combining some winning Convolutional Neural Network models of ImageNet Large
Scale Visual Recognition Challenge (ILSVRC) and propose two architectures. We
find that detection accuracy increases drastically when we focus on the Gray
Matter (GM) and White Matter (WM) regions from the MR images instead of using
whole MR images. We achieved an average accuracy of 94.7\% using smoothed GM
and WM extracts and one of our proposed architectures. We also perform
occlusion analysis and determine which brain areas are relevant in the
architecture decision making process.
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