CRIB:一种基于设备的物理行为分析新方法

P. Hibbing, S. Creasy, J. Carlson
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引用次数: 0

摘要

身体行为(例如,睡眠、久坐行为和身体活动)经常发生在持续的发作中,并被短暂的中断打断。为了检测和分类这些中断的发作,研究人员通常使用可穿戴设备和专门的算法。大多数算法按时间顺序检查数据,在满足特定条件时启动和终止回合。因此,回合可以封装或与也满足激活和终止标准的后期周期重叠(即,可选回合解决方案)。在某些情况下,在进行最终分类之前,比较这些备选的解决方案是可取的。因此,需要以比较为重点的算法,这些算法可以单独使用,也可以与以时间为重点的对应算法一起使用。在这篇技术笔记中,我们提出了一种以比较为中心的算法,称为CRIB(集群识别中断回合)。它使用聚集的分层聚类来促进不同回合解决方案的比较,最终的分类有利于符合用户指定标准的最小回合数(即,对中断的数量、单个持续时间和累积持续时间的限制)。为了证明这一点,我们使用CRIB来评估来自国家健康和营养检查调查的加速度计数据中的中度至剧烈体育活动,并与两种已建立的以时间为中心的算法的结果进行了比较。我们的讨论探讨了CRIB的优势和局限性,以及在未来研究中使用它的潜在考虑和应用。一个在线小插图(https://github.com/paulhibbing/PBpatterns/blob/main/vignettes/CRIB.pdf)可以帮助用户在R中实现CRIB。
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CRIB: A Novel Method for Device-Based Physical Behavior Analysis
Physical behaviors (e.g., sleep, sedentary behavior, and physical activity) often occur in sustained bouts that are punctuated with brief interruptions. To detect and classify these interrupted bouts, researchers commonly use wearable devices and specialized algorithms. Most algorithms examine the data in chronological order, initiating and terminating bouts whenever specific criteria are met. Consequently, the bouts may encapsulate or overlap with later periods that also meet the activation and termination criteria (i.e., alternative bout solutions). In some cases, it is desirable to compare these alternative bout solutions before making a final classification. Thus, comparison-focused algorithms are needed, which can be used in isolation or in concert with their chronology-focused counterparts. In this technical note, we present a comparison-focused algorithm called CRIB (Clustered Recognition of Interrupted Bouts). It uses agglomerative hierarchical clustering to facilitate the comparison of different bout solutions, with the final classification being made in favor of the smallest number of bouts that comply with user-specified criteria (i.e., limits on the number, individual duration, and cumulative duration of interruptions). For demonstration, we use CRIB to assess bouts of moderate to vigorous physical activity in accelerometer data from the National Health and Nutrition Examination Survey, and we include a comparison against results from two established chronology-focused algorithms. Our discussion explores strengths and limitations of CRIB, as well as potential considerations and applications for using it in future studies. An online vignette (https://github.com/paulhibbing/PBpatterns/blob/main/vignettes/CRIB.pdf) is available to assist users with implementing CRIB in R.
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