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

Cortical oscillatory feature-based classification of Parkinson’s disease with freezing gait

A. Singh, S. Roy, KC. Santosh (Vermillion, USA)

Meeting: 2022 International Congress

Abstract Number: 1536

Keywords: Electroencephalogram(EEG), Gait disorders: Pathophysiology, Parkinson’s

Category: Parkinson's Disease: Pathophysiology

Objective: The objective of this study was to determine the resting-state cortical oscillations and the machine learning model that best classifies Parkinson’s disease (PD) patients with freezing of gait (PDFOG+) and PD patients without FOG (PDFOG–) using cortical oscillatory features.

Background: FOG is one of the most debilitating motor symptoms in the late stage of Parkinson’s disease (PD) as it may lead to falls and impact quality of life. The pathophysiology of FOG is poorly understood in PD; however, our previous reports have suggested the presence of abnormal theta and beta oscillations in the cortico-basal ganglia networks in PDFOG+ compared to PDFOG–. However, cortical oscillations have not yet been extensively investigated to distinguish between PDFOG+ and PDFOG– using machine learning models based on resting-state scalp electroencephalography (EEG) recordings.

Method: EEG recordings of 83 PD patients (42 PDFOG+ / 41 PDFOG–) and 41 healthy age-matched controls were collected during resting-state condition for 3 minutes. We segmented EEG signals into 3 seconds epochs and converted time-domain signals into frequency domain. We exported the mean normalized power values from each frequency band. We used normalized power values from each epoch for classification models. We implemented our models on all frequency bands and channels. We used six different machine learning algorithms to classify PDFOG+ from other groups: Support Vector Machine (SVM), Logistic Regression (LR), Random Forest (RF), Decision Tree (DT), Bayes, and Deep Neural Network (DNN). We employed k-fold cross-validation approach for validating the results.

Results: Our machine learning classifying methods demonstrate that DNN model with frontal cortical theta (4-7 Hz) oscillations and combined oscillatory power of theta and beta (13-30 Hz) bands differentiate PDFOG+ from PDFOG– and healthy controls with higher accuracy, precision, recall, and F1-score values compared to other models, frequency bands, and cortical regions.

Conclusion: Our study leads to the understanding of the cortical characteristics of PDFOG+ during the resting-state condition, that can help in improving the objective classification of PDFOG+. Future studies to further improve and validate the performances of our models in clinical practice are warranted.

To cite this abstract in AMA style:

A. Singh, S. Roy, KC. Santosh. Cortical oscillatory feature-based classification of Parkinson’s disease with freezing gait [abstract]. Mov Disord. 2022; 37 (suppl 2). https://www.mdsabstracts.org/abstract/cortical-oscillatory-feature-based-classification-of-parkinsons-disease-with-freezing-gait/. Accessed June 15, 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 2022 International Congress

MDS Abstracts - https://www.mdsabstracts.org/abstract/cortical-oscillatory-feature-based-classification-of-parkinsons-disease-with-freezing-gait/

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?
  • Patients with Essential Tremor Live Longer than their Relatives
  • Increased Risks of Botulinum Toxin Injection in Patients with Hypermobility Ehlers Danlos Syndrome: A Case Series
  • Covid vaccine induced parkinsonism and cognitive dysfunction
  • What is the appropriate sleep position for Parkinson's disease patients with orthostatic hypotension in the morning?
  • Life expectancy with and without Parkinson’s disease in the general population
  • The hardest symptoms that bother patients with Parkinson's disease
  • An Apparent Cluster of Parkinson's Disease (PD) in a Golf Community
  • 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