2023
DOI: 10.2196/49898
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Parkinson Disease Recognition Using a Gamified Website: Machine Learning Development and Usability Study

Shubham Parab,
Jerry Boster,
Peter Washington

Abstract: Background Parkinson disease (PD) affects millions globally, causing motor function impairments. Early detection is vital, and diverse data sources aid diagnosis. We focus on lower arm movements during keyboard and trackpad or touchscreen interactions, which serve as reliable indicators of PD. Previous works explore keyboard tapping and unstructured device monitoring; we attempt to further these works with structured tests taking into account 2D hand movement in addition to finger tapping. Our feas… Show more

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“…Additionally, with the rise and democratization of Information Technology (IT), other researchers have approached PD assessment on the basis of IT interactions; for example, using mobile devices [31,32] and web browsers [33]. In both approaches, PD patients are invited to enter a gamified situation and are prompted to perform movements, either by tapping directly on the mobile phone screen [31,32] or by tracking mouse operations and keyboard inputs on the web browser [33]. Based on rhythm, accuracy, fatigue, and reaction time, among other factors, data are gathered for use as input for machine learning classifiers performing an assessment of PD.…”
Section: Related Workmentioning
confidence: 99%
“…Additionally, with the rise and democratization of Information Technology (IT), other researchers have approached PD assessment on the basis of IT interactions; for example, using mobile devices [31,32] and web browsers [33]. In both approaches, PD patients are invited to enter a gamified situation and are prompted to perform movements, either by tapping directly on the mobile phone screen [31,32] or by tracking mouse operations and keyboard inputs on the web browser [33]. Based on rhythm, accuracy, fatigue, and reaction time, among other factors, data are gathered for use as input for machine learning classifiers performing an assessment of PD.…”
Section: Related Workmentioning
confidence: 99%