Pain and physical activity for one individual

IF 0.3 Q3 MEDICINE, GENERAL & INTERNAL
J. Leppink
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引用次数: 0

Abstract

Aims: there is increasing awareness that for effective patient care we need more than only randomized controlled trials with groups of participants and that carefully collected single case (N = 1) data have several important advantages over traditional group-level studies. With the advance of technology, collecting relevant data from a single case is becoming easier by the day, and this offers tremendous opportunities for understanding how behaviors displayed by an individual can be influenced by one or several key variables. For example, how pain experienced influences the amount of time spent on physical exercise. Method: using publicly available observational single case data, five models are compared: a classical ordinary least squares (OLS) linear regression model; a dynamic regression model (DRM); a two-level random-intercepts model (2LRI); a continuous covariate first-order autoregressive correlation model (CAR1); and an ordinary least squares model with time trend (OLST). These models are compared in terms of overall model fit statistics, estimates of the relation between physical activity (response variable of interest) and pain (covariate of interest), and residual statistics. Results: 2LRI outperforms all other models on both overall model fit and residual statistics, and provides covariate estimates that are in between the relative extremes provided by other models. CAR1 and OLST demonstrate an almost identical performance and one that is substantially better than OLS – which performs worst – and DRM. Conclusion: for observational single case data, DRM, CAR1, OLST, and 2LRI account for the serial correlation that is typically present in single case data in somewhat different ways under somewhat different assumptions, and all perform better than OLS. Implications of these findings for observational, quasi-experimental, and experimental single case studies are discussed.
一个人的疼痛和体力活动
目的:人们越来越意识到,为了有效的患者护理,我们需要的不仅仅是有参与者分组的随机对照试验,而且仔细收集的单个病例(N=1)数据比传统的组水平研究具有几个重要优势。随着技术的进步,从单个病例中收集相关数据变得越来越容易,这为了解个人表现出的行为如何受到一个或多个关键变量的影响提供了巨大的机会。例如,疼痛的体验会影响花在体育锻炼上的时间。方法:利用公开的观测单例数据,比较五种模型:经典的普通最小二乘(OLS)线性回归模型;动态回归模型(DRM);两级随机拦截模型(2LRI);连续协变一阶自回归相关模型(CAR1);以及具有时间趋势的普通最小二乘模型(OLST)。这些模型在总体模型拟合统计、身体活动(感兴趣的反应变量)和疼痛(感兴趣协变量)之间关系的估计以及残差统计方面进行了比较。结果:2LRI在整体模型拟合和残差统计方面都优于所有其他模型,并提供了介于其他模型提供的相对极值之间的协变量估计。CAR1和OLST表现出几乎相同的性能,并且明显优于OLS(性能最差)和DRM。结论:对于观察性单例数据,DRM、CAR1、OLST和2LRI解释了在不同假设下以不同方式出现在单例数据中的序列相关性,并且都比OLS表现得更好。讨论了这些发现对观察性、准实验性和实验性个案研究的启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Scientia Medica
Scientia Medica MEDICINE, GENERAL & INTERNAL-
CiteScore
0.70
自引率
20.00%
发文量
14
审稿时长
10 weeks
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