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使用智能手机应用程序和可穿戴设备在临床试验期间对面肩肱型肌营养不良症进行客观监测:观察性研究。

Objective Monitoring of Facioscapulohumeral Dystrophy During Clinical Trials Using a Smartphone App and Wearables: Observational Study.

作者信息

Maleki Ghobad, Zhuparris Ahnjili, Koopmans Ingrid, Doll Robert J, Voet Nicoline, Cohen Adam, van Brummelen Emilie, Groeneveld Geert Jan, De Maeyer Joris

机构信息

Centre for Human Drug Research, Leiden, Netherlands.

Leiden University Medical Center, Leiden, Netherlands.

出版信息

JMIR Form Res. 2022 Sep 13;6(9):e31775. doi: 10.2196/31775.

Abstract

BACKGROUND

Facioscapulohumeral dystrophy (FSHD) is a progressive muscle dystrophy disorder leading to significant disability. Currently, FSHD symptom severity is assessed by clinical assessments such as the FSHD clinical score and the Timed Up-and-Go test. These assessments are limited in their ability to capture changes continuously and the full impact of the disease on patients' quality of life. Real-world data related to physical activity, sleep, and social behavior could potentially provide additional insight into the impact of the disease and might be useful in assessing treatment effects on aspects that are important contributors to the functioning and well-being of patients with FSHD.

OBJECTIVE

This study investigated the feasibility of using smartphones and wearables to capture symptoms related to FSHD based on a continuous collection of multiple features, such as the number of steps, sleep, and app use. We also identified features that can be used to differentiate between patients with FSHD and non-FSHD controls.

METHODS

In this exploratory noninterventional study, 58 participants (n=38, 66%, patients with FSHD and n=20, 34%, non-FSHD controls) were monitored using a smartphone monitoring app for 6 weeks. On the first and last day of the study period, clinicians assessed the participants' FSHD clinical score and Timed Up-and-Go test time. Participants installed the app on their Android smartphones, were given a smartwatch, and were instructed to measure their weight and blood pressure on a weekly basis using a scale and blood pressure monitor. The user experience and perceived burden of the app on participants' smartphones were assessed at 6 weeks using a questionnaire. With the data collected, we sought to identify the behavioral features that were most salient in distinguishing the 2 groups (patients with FSHD and non-FSHD controls) and the optimal time window to perform the classification.

RESULTS

Overall, the participants stated that the app was well tolerated, but 67% (39/58) noticed a difference in battery life using all 6 weeks of data, we classified patients with FSHD and non-FSHD controls with 93% accuracy, 100% sensitivity, and 80% specificity. We found that the optimal time window for the classification is the first day of data collection and the first week of data collection, which yielded an accuracy, sensitivity, and specificity of 95.8%, 100%, and 94.4%, respectively. Features relating to smartphone acceleration, app use, location, physical activity, sleep, and call behavior were the most salient features for the classification.

CONCLUSIONS

Remotely monitored data collection allowed for the collection of daily activity data in patients with FSHD and non-FSHD controls for 6 weeks. We demonstrated the initial ability to detect differences in features in patients with FSHD and non-FSHD controls using smartphones and wearables, mainly based on data related to physical and social activity.

TRIAL REGISTRATION

ClinicalTrials.gov NCT04999735; https://www.clinicaltrials.gov/ct2/show/NCT04999735.

摘要

背景

面肩肱型肌营养不良(FSHD)是一种进行性肌肉萎缩疾病,会导致严重残疾。目前,FSHD症状严重程度通过临床评估来判定,如FSHD临床评分和计时起立行走测试。这些评估在持续捕捉变化以及疾病对患者生活质量的全面影响方面能力有限。与身体活动、睡眠和社交行为相关的真实世界数据可能会为疾病影响提供更多见解,并且可能有助于评估对FSHD患者功能和幸福感有重要贡献的方面的治疗效果。

目的

本研究探讨了使用智能手机和可穿戴设备基于连续收集步数、睡眠和应用使用等多个特征来捕捉与FSHD相关症状的可行性。我们还确定了可用于区分FSHD患者和非FSHD对照者的特征。

方法

在这项探索性非干预性研究中,使用智能手机监测应用程序对58名参与者(n = 38,66%,FSHD患者;n = 20,34%,非FSHD对照者)进行了6周的监测。在研究期的第一天和最后一天,临床医生评估了参与者的FSHD临床评分和计时起立行走测试时间。参与者在其安卓智能手机上安装该应用程序,获得一块智能手表,并被指示每周使用体重秤和血压计测量体重和血压。在6周时使用问卷评估应用程序在参与者智能手机上的用户体验和感知负担。利用收集到的数据,我们试图确定在区分两组(FSHD患者和非FSHD对照者)中最显著的行为特征以及进行分类的最佳时间窗口。

结果

总体而言,参与者表示该应用程序耐受性良好,但67%(39/58)的人注意到使用整个6周数据后电池续航有差异。利用所有6周的数据,我们对FSHD患者和非FSHD对照者进行分类,准确率为93%,灵敏度为100%,特异性为80%。我们发现分类的最佳时间窗口是数据收集的第一天和第一周,其准确率、灵敏度和特异性分别为95.8%、100%和94.4%。与智能手机加速度、应用使用、位置、身体活动、睡眠和通话行为相关的特征是分类的最显著特征。

结论

远程监测数据收集使我们能够在6周内收集FSHD患者和非FSHD对照者的日常活动数据。我们展示了使用智能手机和可穿戴设备初步检测FSHD患者和非FSHD对照者特征差异的能力,主要基于与身体和社交活动相关的数据。

试验注册

ClinicalTrials.gov NCT04999735;https://www.clinicaltrials.gov/ct2/show/NCT04999735

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