Polvorinos-Fernández Carlos, Sigcha Luis, Centeno-Cerrato María, de Arcas Guillermo, Grande Miriam, Marín Mayca, Pareés Isabel, Martínez-Castrillo Juan Carlos, Pavón Ignacio
Department of Mechanical Engineering, Instrumentation and Applied Acoustics Research Group, ETSI Industriales, Universidad Politécnica de Madrid, Madrid, Spain.
Department of Physical Education and Sports Science, Health Research Institute, University of Limerick, Limerick, Ireland.
JMIR Res Protoc. 2025 Jul 28;14:e72820. doi: 10.2196/72820.
Monitoring motor symptoms in patients with Parkinson disease (PD) presents significant challenges due to the complex nature of symptom progression, variations in medication responses, and the fluctuations that can occur throughout the day. Traditional neurological visits provide only a limited perspective of a patient's overall condition, with challenges in achieving accurate and objective assessments of symptoms. To bridge this gap, extended monitoring in nonclinical settings could play a critical role in personalizing treatments and improving their efficacy. Wearable devices have emerged as potential tools for assessing PD symptom severity; however, studies integrating both in-clinic and free-living conditions, as well as multiday monitoring, remain scarce. Defining digital biomarkers that provide valuable insights into motor symptoms could enable comprehensive monitoring and tracking of PD in various contexts, facilitating more precise medication adjustments and the implementation of advanced therapeutic strategies.
This study aims to collect a dataset to support the proposal and definition of digital biomarkers of PD motor symptoms using wearable devices. Data will be collected both in a supervised setting and continuously in a remote, free-living context during participants' normal daily activities; the study will include patients with PD and healthy controls. The goal is to identify reliable digital biomarkers that can effectively distinguish patients with PD from healthy controls and classify disease severity in both supervised and unsupervised free-living environments.
This paper outlines a protocol for an observational case-control study aimed at assessing motor symptoms in patients with PD using a smartwatch. The smartwatch will record accelerometer, gyroscope, and physical activity data. Participants will be instructed to perform a series of exercises guided via a smartphone. Measurements will be collected in 2 settings: a supervised clinical environment, with motor symptoms assessments conducted at the beginning and end of the study, and in an unsupervised free-living context for 1 week. In both settings, participants will be required to wear the smartwatch while performing the same set of exercises. In their daily routine, participants will be required to wear the smartwatch continuously throughout the day, removing it only at night for charging.
Participant recruitment and data collection started in December 2024 and will continue until spring 2025. The study aims to enroll 20 participants with PD and 20 healthy controls.
It is anticipated that the generation of a dataset of accelerometer and gyroscope signal data recorded from patients with PD at various stages of the disease, alongside data from a control group, will enable robust comparative and impactful analyses. In addition, the study seeks to develop analytical techniques capable of tracking PD symptoms in real-life scenarios, both in everyday settings and clinical environments.
ClinicalTrials.gov NCT06817772; https://clinicaltrials.gov/study/NCT06817772.
INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): DERR1-10.2196/72820.
帕金森病(PD)患者运动症状的监测面临重大挑战,这是由于症状进展的复杂性、药物反应的差异以及一天中可能出现的波动。传统的神经科就诊只能提供患者整体状况的有限视角,在实现对症状的准确和客观评估方面存在挑战。为了弥合这一差距,在非临床环境中的长期监测可能在个性化治疗和提高治疗效果方面发挥关键作用。可穿戴设备已成为评估PD症状严重程度的潜在工具;然而,整合临床和自由生活条件以及多日监测的研究仍然很少。定义能够为运动症状提供有价值见解的数字生物标志物,可以在各种情况下对PD进行全面监测和跟踪,有助于更精确的药物调整和先进治疗策略的实施。
本研究旨在收集一个数据集,以支持使用可穿戴设备对PD运动症状数字生物标志物的提议和定义。数据将在有监督的环境中收集,并在参与者正常日常活动期间在远程、自由生活的环境中持续收集;该研究将包括PD患者和健康对照者。目标是识别可靠的数字生物标志物,这些生物标志物能够在有监督和无监督的自由生活环境中有效地区分PD患者和健康对照者,并对疾病严重程度进行分类。
本文概述了一项观察性病例对照研究的方案,旨在使用智能手表评估PD患者的运动症状。智能手表将记录加速度计、陀螺仪和身体活动数据。参与者将被指示通过智能手机进行一系列练习。测量将在两种环境中收集:有监督的临床环境,在研究开始和结束时进行运动症状评估,以及在无监督的自由生活环境中进行1周。在这两种环境中,参与者在进行同一组练习时都需要佩戴智能手表。在日常生活中,参与者需要全天持续佩戴智能手表,仅在夜间取下充电。
参与者招募和数据收集于2024年12月开始,并将持续到2025年春季。该研究旨在招募20名PD患者和20名健康对照者。
预计从处于疾病各个阶段的PD患者记录的加速度计和陀螺仪信号数据的数据集,以及来自对照组的数据,将能够进行有力的比较和有影响力的分析。此外,该研究旨在开发能够在日常和临床环境等现实生活场景中跟踪PD症状的分析技术。
ClinicalTrials.gov NCT06817772;https://clinicaltrials.gov/study/NCT06817772。
国际注册报告识别码(IRRID):DERR1-10.2196/72820。