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中断时间序列设计在时间点有限的情况下的表现:由于 COVID-19 大流行期间学校关闭而导致的学习损失。

The performance of interrupted time series designs with a limited number of time points: Learning losses due to school closures during the COVID-19 pandemic.

机构信息

Department of Methods and Statistics, Faculty of Social Science, Utrecht University, Utrecht, The Netherlands.

Cito, Arnhem, The Netherlands.

出版信息

PLoS One. 2024 Aug 7;19(8):e0301301. doi: 10.1371/journal.pone.0301301. eCollection 2024.

Abstract

Interrupted time series (ITS) designs are increasingly used for estimating the effect of shocks in natural experiments. Currently, ITS designs are often used in scenarios with many time points and simple data structures. This research investigates the performance of ITS designs when the number of time points is limited and with complex data structures. Using a Monte Carlo simulation study, we empirically derive the performance-in terms of power, bias and precision- of the ITS design. Scenarios are considered with multiple interventions, a low number of time points and different effect sizes based on a motivating example of the learning loss due to COVID school closures. The results of the simulation study show the power of the step change depends mostly on the sample size, while the power of the slope change depends on the number of time points. In the basic scenario, with both a step and a slope change and an effect size of 30% of the pre-intervention slope, the required sample size for detecting a step change is 1,100 with a minimum of twelve time points. For detecting a slope change the required sample size decreases to 500 with eight time points. To decide if there is enough power researchers should inspect their data, hypothesize about effect sizes and consider an appropriate model before applying an ITS design to their research. This paper contributes to the field of methodology in two ways. Firstly, the motivation example showcases the difficulty of employing ITS designs in cases which do not adhere to a single intervention. Secondly, models are proposed for more difficult ITS designs and their performance is tested.

摘要

中断时间序列 (ITS) 设计越来越多地用于估计自然实验中冲击的影响。目前,ITS 设计通常用于具有多个时间点和简单数据结构的场景。本研究调查了当时间点数量有限且数据结构复杂时 ITS 设计的性能。通过蒙特卡罗模拟研究,我们从经验上推导出 ITS 设计的性能——以功率、偏差和精度为指标。考虑了多种干预措施、时间点数量较少以及基于 COVID 学校关闭导致学习损失的示例的不同效应大小的场景。模拟研究的结果表明,阶跃变化的功率主要取决于样本量,而斜率变化的功率取决于时间点的数量。在基本场景中,既有阶跃变化又有斜率变化,且干预前斜率的效应大小为 30%,则检测阶跃变化所需的样本量为 1100,最少需要 12 个时间点。要检测斜率变化,则需要 500 个样本,其中 8 个时间点。为了确定是否有足够的功率,研究人员应该检查他们的数据,假设效应大小,并在将 ITS 设计应用于他们的研究之前考虑适当的模型。本文从两个方面为方法学领域做出了贡献。首先,动机示例展示了在不符合单一干预的情况下,采用 ITS 设计的困难。其次,提出了更困难的 ITS 设计模型,并对其性能进行了测试。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/047a/11305537/1ddc36cc11fb/pone.0301301.g001.jpg

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