» Articles » PMID: 38883736

Using Wearable Sensors and Machine Learning to Assess Upper Limb Function in Huntington's Disease

Overview
Journal Res Sq
Date 2024 Jun 17
PMID 38883736
Authors
Affiliations
Soon will be listed here.
Abstract

Huntington's disease (HD), like many other neurological disorders, affects both lower and upper limb function that is typically assessed in the clinic - providing a snapshot of disease symptoms. Wearable sensors enable the collection of real-world data that can complement such clinical assessments and provide a more comprehensive insight into disease symptoms. In this context, almost all studies are focused on assessing lower limb function via monitoring of gait, physical activity and ambulation. In this study, we monitor upper limb function during activities of daily living in individuals with HD (n = 16), prodromal HD (pHD, n = 7), and controls (CTR, n = 16) using a wrist-worn wearable sensor, called PAMSys ULM, over seven days. The participants were highly compliant in wearing the sensor with an average daily compliance of 99% (100% for HD, 98% for pHD, and 99% for CTR). Goal-directed movements (GDM) of the hand were detected using a deep learning model, and kinematic features of each GDM were estimated. The collected data was used to predict disease groups (i.e., HD, pHD, and CTR) and clinical scores using a combination of statistical and machine learning-based models. Significant differences in GDM features were observed between the groups. HD participants performed fewer GDMs with long duration (> 7.5 seconds) compared to CTR (p-val = 0.021, d = -0.86). In velocity and acceleration metrics, the highest effect size feature was the entropy of the velocity zero-crossing length segments (HD vs CTR p-val <0.001, d = -1.67; HD vs pHD p-val = 0.043, d=-0.98; CTR vs pHD p-val = 0.046, d=0.96). In addition, this same variable showed a strongest correlation with clinical scores. Classification models achieved good performance in distinguishing HD, pHD and CTR individuals with a balanced accuracy of 67% and a 0.72 recall for the HD group, while regression models accurately predicted clinical scores. Notably the explained variance for the upper extremity function subdomain scale of Unified Huntington's Disease Rating Scale (UHDRS) was the highest, with the model capturing 60% of the variance. Our findings suggest the potential of wearables and machine learning for early identification of phenoconversion, remote monitoring in HD, and evaluating new treatments efficacy in clinical trials and medicine.

References
1.
Sharma M, Mishra R, Hall A, Casado J, Cole R, Nunes A . Remote at-home wearable-based gait assessments in Progressive Supranuclear Palsy compared to Parkinson's Disease. BMC Neurol. 2023; 23(1):434. PMC: 10712191. DOI: 10.1186/s12883-023-03466-2. View

2.
Andrzejewski K, Dowling A, Stamler D, Felong T, Harris D, Wong C . Wearable Sensors in Huntington Disease: A Pilot Study. J Huntingtons Dis. 2016; 5(2):199-206. DOI: 10.3233/JHD-160197. View

3.
Papp K, Kaplan R, Snyder P . Biological markers of cognition in prodromal Huntington's disease: a review. Brain Cogn. 2011; 77(2):280-91. DOI: 10.1016/j.bandc.2011.07.009. View

4.
Mishra R, Nunes A, Enriquez A, Profeta V, Wells M, Lynch D . At-home wearable-based monitoring predicts clinical measures and biological biomarkers of disease severity in Friedreich's Ataxia. Commun Med (Lond). 2024; 4(1):217. PMC: 11519636. DOI: 10.1038/s43856-024-00653-1. View

5.
Nunes A, Yildiz Potter I, Mishra R, Bonato P, Vaziri A . A deep learning wearable-based solution for continuous at-home monitoring of upper limb goal-directed movements. Front Neurol. 2024; 14:1295132. PMC: 10796739. DOI: 10.3389/fneur.2023.1295132. View