Yael Travis-Lumer, Yair Goldberg, Stephen Z Levine
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The current paper proposes a method and develops a user-friendly R package to quantify the effect size of an ITS regression model for continuous and count outcomes, with or without seasonal adjustment.</p><p><strong>Results: </strong>The effect size presented in this work, together with its corresponding 95% confidence interval (CI) and P-value, is based on the ITS model-based fitted values and the predicted counterfactual (the exposed period had the intervention not occurred) values. A user-friendly R package to fit an ITS and estimate the effect size was developed and accompanies this paper. To illustrate, we implemented a nation population-based ITS study from January 2001 to May 2021 covering the all-cause mortality of Israel (n = 9,350 thousand) to quantify the effect size of Covid-19 exposure on mortality rates. In the period unexposed to the Covid-19 pandemic, the mortality rate decreased over time and was expected to continue decreasing had Covid-19 not occurred. 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引用次数: 3
摘要
背景:中断时间序列(ITS)分析是一种时间序列回归模型,旨在评估干预对感兴趣的结果的影响。ITS分析是一种准实验研究设计,适用于发生自然实验的情况,越来越受欢迎,特别是由于Covid-19大流行。然而,包括缺乏对照组在内的挑战阻碍了ITS效应量的量化。本文提出了一种方法,并开发了一个用户友好的R包来量化ITS回归模型对连续和计数结果的效应大小,有或没有季节调整。结果:本工作中的效应大小及其相应的95%置信区间(CI)和p值是基于its模型的拟合值和预测的反事实(未发生干预的暴露期)值。开发了一个用户友好的R包来拟合ITS并估计效应大小,并随附于本文。为了说明这一点,我们从2001年1月至2021年5月实施了一项基于全国人口的ITS研究,涵盖了以色列的全因死亡率(n = 935万),以量化Covid-19暴露对死亡率的影响大小。在未发生Covid-19大流行的时期,死亡率随着时间的推移而下降,如果没有发生Covid-19,预计死亡率将继续下降。相比之下,暴露于Covid-19大流行的时期与全因死亡率增加相关(相对风险= 1.11,95% CI = 1.04, 1.18, P)。结论:首次量化了ITS的效应大小,可由最终用户使用我们开发的R包进行估计,并通过显示Covid-19大流行后死亡率增加的数据进行了验证。ITS效应大小报告可以帮助公共卫生政策制定者使用单一的、易于理解的测量方法评估整个干预效果的大小。
Effect size quantification for interrupted time series analysis: implementation in R and analysis for Covid-19 research.
Background: Interrupted time series (ITS) analysis is a time series regression model that aims to evaluate the effect of an intervention on an outcome of interest. ITS analysis is a quasi-experimental study design instrumental in situations where natural experiments occur, gaining popularity, particularly due to the Covid-19 pandemic. However, challenges, including the lack of a control group, have impeded the quantification of the effect size in ITS. The current paper proposes a method and develops a user-friendly R package to quantify the effect size of an ITS regression model for continuous and count outcomes, with or without seasonal adjustment.
Results: The effect size presented in this work, together with its corresponding 95% confidence interval (CI) and P-value, is based on the ITS model-based fitted values and the predicted counterfactual (the exposed period had the intervention not occurred) values. A user-friendly R package to fit an ITS and estimate the effect size was developed and accompanies this paper. To illustrate, we implemented a nation population-based ITS study from January 2001 to May 2021 covering the all-cause mortality of Israel (n = 9,350 thousand) to quantify the effect size of Covid-19 exposure on mortality rates. In the period unexposed to the Covid-19 pandemic, the mortality rate decreased over time and was expected to continue decreasing had Covid-19 not occurred. In contrast, the period exposed to the Covid-19 pandemic was associated with an increased all-cause mortality rate (relative risk = 1.11, 95% CI = 1.04, 1.18, P < 0.001).
Conclusion: For the first time, the effect size in ITS: was quantified, can be estimated by end-users with an R package we developed, and was demonstrated with data showing an increase in mortality following the Covid-19 pandemic. ITS effect size reporting can assist public health policy makers in assessing the magnitude of the entire intervention effect using a single, readily understood measure.
期刊介绍:
Emerging Themes in Epidemiology is an open access, peer-reviewed, online journal that aims to promote debate and discussion on practical and theoretical aspects of epidemiology. Combining statistical approaches with an understanding of the biology of disease, epidemiologists seek to elucidate the social, environmental and host factors related to adverse health outcomes. Although research findings from epidemiologic studies abound in traditional public health journals, little publication space is devoted to discussion of the practical and theoretical concepts that underpin them. Because of its immediate impact on public health, an openly accessible forum is needed in the field of epidemiology to foster such discussion.