Abstract
Background
Parkinson’s
disease (PD) is a progressive neurological disease, with characteristic
motor symptoms such as tremor and bradykinesia. There is a growing
interest to continuously monitor these and other symptoms through
body-worn sensor technology. However, limited battery life and memory
capacity hinder the potential for continuous, long-term monitoring with
these devices. There is little information available on the relative
value of adding sensors, increasing sampling rate, or computing complex
signal features, all of which may improve accuracy of symptom detection
at the expense of computational resources. Here we build on a previous
study to investigate the relationship between data measurement
characteristics and accuracy when using wearable sensor data to classify
tremor and bradykinesia in patients with PD.
Methods
Thirteen
individuals with PD wore a flexible, skin-mounted sensor (collecting
tri-axial accelerometer and gyroscope data) and a commercial smart watch
(collecting tri-axial accelerometer data) on their predominantly
affected hand. The participants performed a series of standardized motor
tasks, during which a clinician scored the severity of tremor and
bradykinesia in that limb. Machine learning models were trained on
scored data to classify tremor and bradykinesia. Model performance was
compared when using different types of sensors (accelerometer and/or
gyroscope), different data sampling rates (up to 62.5 Hz), and different
categories of pre-engineered features (up to 148 features). Performance
was also compared between the flexible sensor and smart watch for each
analysis.
Results
First, there was no effect of device type for classifying tremor symptoms (p > 0.34),
but bradykinesia models incorporating gyroscope data performed slightly
better (up to 0.05 AUROC) than other models (p = 0.01). Second, model performance decreased with sampling frequency (p < 0.001) for tremor, but not bradykinesia (p > 0.47). Finally, model performance for both symptoms was maintained after substantially reducing the feature set.
Conclusions
Our
findings demonstrate the ability to simplify measurement
characteristics from body-worn sensors while maintaining performance in
PD symptom detection. Understanding the trade-off between model
performance and data resolution is crucial to design efficient, accurate
wearable sensing systems. This approach may improve the feasibility of
long-term, continuous, and real-time monitoring of PD symptoms by
reducing computational burden on wearable devices.
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