首页> 外文期刊>Digital biomarkers. >A Thorough Examination of Morning Activity Patterns in Adults with Arthritis and Healthy Controls Using Actigraphy Data
【24h】

A Thorough Examination of Morning Activity Patterns in Adults with Arthritis and Healthy Controls Using Actigraphy Data

机译:彻底检测使用戏法数据的关节炎和健康控制的早晨活动模式

获取原文
           

摘要

Background: Wearable sensors allow researchers to remotely capture digital health data, including physical activity, which may identify digital biomarkers to differentiate healthy and clinical cohorts. To date, research has focused on high-level data (e.g., overall step counts) which may limit our insights to whether people move differently, rather than how they move differently. Objective: This study therefore aimed to use actigraphy data to thoroughly examine activity patterns during the first hours following waking in arthritis patients ( n = 45) and healthy controls ( n = 30). Methods: Participants wore an Actigraph GT9X Link for 28 days. Activity counts were analysed and compared over varying epochs, ranging from 15 min to 4 h, starting with waking in the morning. The sum, and a measure of rate of change of cumulative activity in the period immediately after waking (area under the curve [AUC]) for each time period, was calculated for each participant, each day, and individual and group means were calculated. Two-tailed independent t tests determined differences between the groups. Results: No differences were seen for summed activity counts across any time period studied. However, differences were noted in the AUC analysis for the discrete measures of relative activity. Specifically, within the first 15, 30, 45, and 60 min following waking, the AUC for activity counts was significantly higher in arthritis patients compared to controls, particularly at the 30 min period ( t = –4.24, p = 0.0002). Thus, while both cohorts moved the same amount, the way in which they moved was different. Conclusion: This study is the first to show that a detailed analysis of actigraphy variables could identify activity pattern changes associated with arthritis, where the high-level daily summaries did not. Results suggest discrete variables derived from raw data may be useful to help identify clinical cohorts and should be explored further to determine if they may be effective clinical biomarkers.
机译:背景:可穿戴传感器允许研究人员远程捕获数字健康数据,包括身体活动,这可能识别数字生物标志物以区分健康和临床队列。迄今为止,研究专注于高级别数据(例如,整体步数),这可能会限制我们对人们是否不同的洞察,而不是它们如何移动方式。目的:这项研究旨在在关节炎患者(n = 45)和健康对照中唤醒后的第一小时内彻底检查活动模式,彻底检查活动模式(n = 30)。方法:参与者穿着Actigraph GT9x链接28天。分析了活性计数,并在不同的时期比较,从15分钟到4小时,从早上开始,从早上开始。每天的参与者计算每次举行的时段(曲线[AUC]下的区域)中的总和和累积活动变化率的衡量标准,每天都计算每个参与者和个人和组手段。双尾独立T测试在组之间确定了差异。结果:在研究的任何时间段中,没有看到总结活动的差异。但是,在离散活动的离散措施的AUC分析中注意到了差异。具体地,在唤醒后的前15,30,45和60分钟内,与对照相比,关节炎患者的活性计数的AUC显着高,特别是在30分钟(T = -4.24,P = 0.0002)。因此,虽然两个队列都移动了相同的数量,它们移动的方式是不同的。结论:本研究首先表明对抗性变量的详细分析可以识别与关节炎相关的活动模式变化,其中高水平的每日摘要没有。结果表明,来自原始数据的离散变量可能有助于帮助识别临床群体,并应进一步探索以确定它们是否可以是有效的临床生物标志物。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号