2024
DOI: 10.1155/2024/5787563
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Continuous and Unconstrained Tremor Monitoring in Parkinson’s Disease Using Supervised Machine Learning and Wearable Sensors

Fernando Rodriguez,
Philipp Krauss,
Jonas Kluckert
et al.

Abstract: Background. Accurately assessing the severity and frequency of fluctuating motor symptoms is important at all stages of Parkinson’s disease management. Contrarily to time-consuming clinical testing or patient self-reporting with uncertain reliability, recordings with wearable sensors show promise as a tool for continuously and objectively assessing PD symptoms. While wearables-based clinical assessments during standardised and scripted tasks have been successfully implemented, assessments during unconstrained … Show more

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