Journal of Decision Making and Healthcare

Electronic ISSN: 3008-1572

DOI: 10.69829/jdmh

Predicting Parkinson’s disease clinical stages with extreme learning machine on center of pressure data

Journal of Decision Making and Healthcare, Volume 1, Issue 2, December 2024, Pages: 77–89

ARUNEE PROMSRI

Department of Physical Therapy, School of Allied Health Sciences, University of Phayao, Phayao 56000, Thailand

PRONPAT PEEYADA

Department of Mathematics, School of Science, University of Phayao, Phayao 56000, Thailand

WATCHARAPORN CHOLAMJIAK

Department of Mathematics, School of Science, University of Phayao, Phayao 56000, Thailand


Abstract

Parkinson's disease (PD) is a progressive disorder that affects body movement, with postural instability contributing to fall risk. This study applies machine learning to assess whether postural sway features derived from center-of-pressure (COP) data can differentiate PD stages classified by the Hoehn and Yahr (H&Y) system. COP data from 32 PD patients (mean age 65.5 years, mean disease duration 7.4 years) were collected during bipedal balancing on stable and unstable surfaces with eyes open and closed. Thirteen time-domain features were extracted, and an extreme learning machine (ELM) was trained to predict PD stages based on four metrics: accuracy, recall, precision, and F1-score. The features were evaluated across nine cases with selective removal of specific COP variables. Results showed high classification accuracy across all cases (over 80%), with Instance 3 achieving the highest accuracy (91.7%) by excluding ``mean velocity" in both sway directions under stable and unstable conditions. These findings suggest that COP-based postural sway measurements can effectively indicate PD progression, with specific variables reflecting distinct physiological mechanisms in postural control.


Cite this Article as

Arunee Promsri, Pronpat Peeyada, and Watcharaporn Cholamjiak, Predicting Parkinson’s disease clinical stages with extreme learning machine on center of pressure data, Journal of Decision Making and Healthcare, 1(2), 77–89, 2024