TY - JOUR
T1 - Using wearable sensors and machine learning to assess upper limb function in Huntington’s disease
AU - Nunes, Adonay S.
AU - Yıldız Potter, İlkay
AU - Mishra, Ram Kinker
AU - Casado, Jose
AU - Dana, Nima
AU - Geronimo, Andrew
AU - Tarolli, Christopher G.
AU - Schneider, Ruth B.
AU - Dorsey, E. Ray
AU - Adams, Jamie L.
AU - Vaziri, Ashkan
N1 - Publisher Copyright:
© The Author(s) 2025.
PY - 2025/12
Y1 - 2025/12
N2 - Background: Huntington’s disease, a neurodegenerative disorder, impairs both upper and lower limb function, typically assessed in clinical settings. However, wearable sensors offer the opportunity to monitor real-world data that complements clinical assessments, providing a more comprehensive understanding of disease symptoms. Methods: In this study, we monitor upper limb function in individuals with Huntington’s disease (HD, n = 16), prodromal HD (pHD, n = 7), and controls (CTR, n = 16) using a wrist-worn wearable sensor over a 7-day period. Goal-directed hand movements are detected through a deep learning model, and kinematic features of each movement are analyzed. The collected data is used to predict disease groups and clinical scores using statistical and machine learning models. Results: Here we show that significant differences in goal-directed movement features exist between the groups. Additionally, several of these features strongly correlate with clinical scores. Classification models accurately distinguish between HD, pHD, and CTR individuals, achieving a balanced accuracy of 67% and a recall of 0.72 for the HD group. Regression models effectively predict clinical scores. Conclusions: This study demonstrates the potential of wearable sensors and machine learning to monitor upper limb function in Huntington’s disease, offering a tool for early detection, remote monitoring, and assessing treatment efficacy in clinical trials.
AB - Background: Huntington’s disease, a neurodegenerative disorder, impairs both upper and lower limb function, typically assessed in clinical settings. However, wearable sensors offer the opportunity to monitor real-world data that complements clinical assessments, providing a more comprehensive understanding of disease symptoms. Methods: In this study, we monitor upper limb function in individuals with Huntington’s disease (HD, n = 16), prodromal HD (pHD, n = 7), and controls (CTR, n = 16) using a wrist-worn wearable sensor over a 7-day period. Goal-directed hand movements are detected through a deep learning model, and kinematic features of each movement are analyzed. The collected data is used to predict disease groups and clinical scores using statistical and machine learning models. Results: Here we show that significant differences in goal-directed movement features exist between the groups. Additionally, several of these features strongly correlate with clinical scores. Classification models accurately distinguish between HD, pHD, and CTR individuals, achieving a balanced accuracy of 67% and a recall of 0.72 for the HD group. Regression models effectively predict clinical scores. Conclusions: This study demonstrates the potential of wearable sensors and machine learning to monitor upper limb function in Huntington’s disease, offering a tool for early detection, remote monitoring, and assessing treatment efficacy in clinical trials.
UR - https://www.scopus.com/pages/publications/85219168045
UR - https://www.scopus.com/pages/publications/85219168045#tab=citedBy
U2 - 10.1038/s43856-025-00770-5
DO - 10.1038/s43856-025-00770-5
M3 - Article
C2 - 40000872
AN - SCOPUS:85219168045
SN - 2730-664X
VL - 5
JO - Communications Medicine
JF - Communications Medicine
IS - 1
M1 - 50
ER -