基于智能手机的类风湿性关节炎患者身体功能客观评估:PARADE研究

Q1 Computer Science
Digital Biomarkers Pub Date : 2020-04-30 eCollection Date: 2020-01-01 DOI:10.1159/000506860
Valentin Hamy, Luis Garcia-Gancedo, Andrew Pollard, Anniek Myatt, Jingshu Liu, Andrew Howland, Philip Beineke, Emilia Quattrocchi, Rachel Williams, Michelle Crouthamel
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引用次数: 21

摘要

背景:测量身体活动和活动能力的数字生物标志物对类风湿关节炎等慢性疾病的评估有很大的兴趣,因为它提供了对患者生活质量的见解,可以在整个人群中进行可靠的比较。目的:探讨通过移动应用软件对远程采集的iPhone传感器数据进行分析的可行性,以期获得类风湿性关节炎患者功能能力方面有意义的信息。方法:为研究参与者提供了两个客观的、主动的任务:手腕关节运动测试和行走测试,两者都是在没有任何医疗监督的情况下远程进行的。在这些任务中,陀螺仪和加速度计的时间序列数据被捕获。处理方案是使用机器学习技术开发的,如逻辑回归,以及明确编程的算法来评估这两个任务中的数据质量。从高质量数据中提取腕关节屈伸活动范围(用于腕关节运动测试)和步态参数(用于步行测试)等运动特定特征,并与主观疼痛和活动参数进行比较,分别通过应用程序捕获。结果:646例腕关节运动标本中,优良率289例(45%)。步行测试收集的数据包括2,583个样本(通过867次测试执行),其中651个(25%)是高质量的。对高质量数据的进一步分析强调了活动能力降低与症状严重程度增加之间的联系。方差分析显示,轻度中度腕关节疼痛组(220人)与重度腕关节疼痛组(36人)的腕关节活动度(p < 0.001)以及轻度和中度腕关节疼痛组(p < 0.03)的平均步数差异具有统计学意义。结论:这些发现证明了使用iPhone传感器远程捕获和量化有意义的客观临床信息的潜力,并代表了开发以患者为中心的类风湿关节炎临床试验数字终点的早期步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing Smartphone-Based Objective Assessments of Physical Function in Rheumatoid Arthritis Patients: The PARADE Study.

Background: Digital biomarkers that measure physical activity and mobility are of great interest in the assessment of chronic diseases such as rheumatoid arthritis, as it provides insights on patients' quality of life that can be reliably compared across a whole population.

Objective: To investigate the feasibility of analyzing iPhone sensor data collected remotely by means of a mobile software application in order to derive meaningful information on functional ability in rheumatoid arthritis patients.

Methods: Two objective, active tasks were made available to the study participants: a wrist joint motion test and a walk test, both performed remotely and without any medical supervision. During these tasks, gyroscope and accelerometer time-series data were captured. Processing schemes were developed using machine learning techniques such as logistic regression as well as explicitly programmed algorithms to assess data quality in both tasks. Motion-specific features including wrist joint range of motion (ROM) in flexion-extension (for the wrist motion test) and gait parameters (for the walk test) were extracted from high quality data and compared with subjective pain and mobility parameters, separately captured via the application.

Results: Out of 646 wrist joint motion samples collected, 289 (45%) were high quality. Data collected for the walk test included 2,583 samples (through 867 executions of the test) from which 651 (25%) were high quality. Further analysis of high-quality data highlighted links between reduced mobility and increased symptom severity. ANOVA testing showed statistically significant differences in wrist joint ROM between groups with light-moderate (220 participants) versus severe (36 participants) wrist pain (p < 0.001) as well as in average step times between groups with slight versus moderate problems walking about (p < 0.03).

Conclusion: These findings demonstrate the potential to capture and quantify meaningful objective clinical information remotely using iPhone sensors and represent an early step towards the development of patient-centric digital endpoints for clinical trials in rheumatoid arthritis.

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来源期刊
Digital Biomarkers
Digital Biomarkers Medicine-Medicine (miscellaneous)
CiteScore
10.60
自引率
0.00%
发文量
12
审稿时长
23 weeks
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