Early Diagnosis of Parkinsons Disease by Analyzing Magnetic Resonance Imaging Brain Scans and Patient Characteristics
Sabrina Zhu

TL;DR
This study develops a hybrid deep learning model combining symptoms and MRI data to accurately classify Parkinson's disease severity into five stages, outperforming models using only one data type.
Contribution
It introduces the first large-scale hybrid model integrating symptoms and MRI scans for early and accurate PD diagnosis using deep learning.
Findings
Hybrid model achieved 94% accuracy.
Hybrid model outperformed symptom-only and MRI-only models.
Model accurately classified patients into five severity stages.
Abstract
Parkinsons disease, PD, is a chronic condition that affects motor skills and includes symptoms like tremors and rigidity. The current diagnostic procedure uses patient assessments to evaluate symptoms and sometimes a magnetic resonance imaging or MRI scan. However, symptom variations cause inaccurate assessments, and the analysis of MRI scans requires experienced specialists. This research proposes to accurately diagnose PD severity with deep learning by combining symptoms data and MRI data from the Parkinsons Progression Markers Initiative database. A new hybrid model architecture was implemented to fully utilize both forms of clinical data, and models based on only symptoms and only MRI scans were also developed. The symptoms based model integrates a fully connected deep learning neural network, and the MRI scans and hybrid models integrate transfer learning based convolutional neural…
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Taxonomy
TopicsParkinson's Disease Mechanisms and Treatments · Voice and Speech Disorders
