MDS Abstracts

Abstracts from the International Congress of Parkinson’s and Movement Disorders.

MENU 
  • Home
  • Meetings Archive
    • 2024 International Congress
    • 2023 International Congress
    • 2022 International Congress
    • MDS Virtual Congress 2021
    • MDS Virtual Congress 2020
    • 2019 International Congress
    • 2018 International Congress
    • 2017 International Congress
    • 2016 International Congress
  • Keyword Index
  • Resources
  • Advanced Search

Deep learning-based Prediction of Visual Dysfunction in Parkinson’s Disease from 31 Brain Regions of Interest using Quantitative Diffusion MRI

C. Raimondo, L. Singanamala, M. Alizadeh (Philadelphia, USA)

Meeting: 2024 International Congress

Abstract Number: 361

Keywords: Parkinson’s, Visuospatial deficits

Category: Parkinson's Disease: Non-Motor Symptoms

Objective: Compare the performance of deep learning and machine learning models trained on quantitative diffusion measurements in the prediction of visual dysfunction in Parkinson’s Disease cohort.

Background: Parkinson’s Disease (PD) is a primary progressive neurodegenerative disorder characterized by debilitating motor and non-motor symptoms such as visual dysfunction.1

Diffusion tensor imaging (DTI) is a post-processing neuroimaging modality derived from DWI.

Method: This study includes 43 patients with PD clinically evaluated for visual dysfunction. Quantitative measures at 37 brain ROIs were obtained from 7 DWI maps. Deep learning (DL) models included a 5 multi-layer perceptron (MLP) and 1-dimension convolutional neural network (1D-CNN). DL model performance was evaluated using train, validation, and test set accuracy (%) and AUC-ROC score. Comparison to classical ML models with hyperparameter tuning and cross validation were performed using 5 K-folds.

Results: DL models were trained for 50 epochs in which the 1D-CNN achieved a higher average train and comparable best validation accuracy compared to the MLP model (96.7% vs 60% train; 83.0% vs 83.0% validation). Test set evaluation of deep learning models revealed 1D-CNN outperformed MLP on the test dataset in accuracy (80% vs 43%) and AUC-ROC (0.72 vs 0.42).

Conclusion: We demonstrate the ability of DL models to classify visual dysfunction in PD using quantitative measures derived from DWI imaging. Due to the relationship between visual dysfunction and poor prognostic outcomes in PD, our study indicates machine learning based tools may aid in early disease detection and clinical management.

To cite this abstract in AMA style:

C. Raimondo, L. Singanamala, M. Alizadeh. Deep learning-based Prediction of Visual Dysfunction in Parkinson’s Disease from 31 Brain Regions of Interest using Quantitative Diffusion MRI [abstract]. Mov Disord. 2024; 39 (suppl 1). https://www.mdsabstracts.org/abstract/deep-learning-based-prediction-of-visual-dysfunction-in-parkinsons-disease-from-31-brain-regions-of-interest-using-quantitative-diffusion-mri/. Accessed July 3, 2025.
  • Tweet
  • Click to email a link to a friend (Opens in new window) Email
  • Click to print (Opens in new window) Print

« Back to 2024 International Congress

MDS Abstracts - https://www.mdsabstracts.org/abstract/deep-learning-based-prediction-of-visual-dysfunction-in-parkinsons-disease-from-31-brain-regions-of-interest-using-quantitative-diffusion-mri/

Most Viewed Abstracts

  • This Week
  • This Month
  • All Time
  • Covid vaccine induced parkinsonism and cognitive dysfunction
  • Life expectancy with and without Parkinson’s disease in the general population
  • What is the appropriate sleep position for Parkinson's disease patients with orthostatic hypotension in the morning?
  • Estimation of the 2020 Global Population of Parkinson’s Disease (PD)
  • An atypical and interesting feature of Parkinson´s disease
  • Covid vaccine induced parkinsonism and cognitive dysfunction
  • Life expectancy with and without Parkinson’s disease in the general population
  • What is the appropriate sleep position for Parkinson's disease patients with orthostatic hypotension in the morning?
  • An atypical and interesting feature of Parkinson´s disease
  • Increased Risks of Botulinum Toxin Injection in Patients with Hypermobility Ehlers Danlos Syndrome: A Case Series
  • Effect of marijuana on Essential Tremor: A case report
  • Increased Risks of Botulinum Toxin Injection in Patients with Hypermobility Ehlers Danlos Syndrome: A Case Series
  • Covid vaccine induced parkinsonism and cognitive dysfunction
  • Estimation of the 2020 Global Population of Parkinson’s Disease (PD)
  • Patients with Essential Tremor Live Longer than their Relatives
  • Help & Support
  • About Us
  • Cookies & Privacy
  • Wiley Job Network
  • Terms & Conditions
  • Advertisers & Agents
Copyright © 2025 International Parkinson and Movement Disorder Society. All Rights Reserved.
Wiley