School of Public Health and Preventive Medicine, Monash University, 533 St. Kilda Road, Melbourne, Victoria 3004, Australia.
Clinical Epidemiology Program, Ottawa Hospital Research Institute, 1053 Carling Avenue, Ottawa, Ontario, Canada; School of Epidemiology, Public Health and Preventive Medicine, University of Ottawa, 75 Laurier Avenue Eeast, Ottawa, Ontario, Canada.
J Clin Epidemiol. 2020 Jun;122:1-11. doi: 10.1016/j.jclinepi.2020.02.006. Epub 2020 Feb 25.
Interrupted time series (ITS) designs are frequently used in public health to examine whether an intervention or exposure has influenced health outcomes. Few reviews have been undertaken to examine the design characteristics, statistical methods, and completeness of reporting of published ITS studies.
We used stratified random sampling to identify 200 ITS studies that evaluated public health interventions or exposures from PubMed (2013-2017). Study characteristics, details of statistical models and estimation methods used, effect metrics, and parameter estimates were extracted. From the 200 studies, 230 time series were examined.
Common statistical methods used were linear regression (31%, 72/230) and autoregressive integrated moving average (19%, 43/230). In 17% (40/230) of the series, we could not determine the statistical method used. Autocorrelation was acknowledged in 63% (145/230) of the series. An estimate of the autocorrelation coefficient was given for only 1% of the series (3/230). Measures of precision were reported for 63% of effect measures (541/852).
Many aspects of the design, methods, analysis, and reporting of ITS studies can be improved, particularly description of the statistical methods and approaches to adjust for and estimate autocorrelation. More guidance on the conduct and reporting of ITS studies is needed to improve this study design.
间断时间序列(ITS)设计常用于公共卫生领域,以检验干预或暴露是否对健康结果产生影响。目前已经开展了一些综述,旨在考察已发表的 ITS 研究的设计特征、统计方法和报告的完整性。
我们采用分层随机抽样的方法,从 PubMed(2013-2017 年)中确定了 200 项评估公共卫生干预或暴露的 ITS 研究。提取了研究特征、使用的统计模型和估计方法的详细信息、效应指标和参数估计。在这 200 项研究中,我们共考察了 230 个时间序列。
常用的统计方法包括线性回归(31%,72/230)和自回归积分移动平均(19%,43/230)。在 17%(40/230)的序列中,我们无法确定所使用的统计方法。63%(145/230)的序列承认了自相关性。仅有 1%(3/230)的序列给出了自相关系数的估计值。63%的效应指标(541/852)报告了精度测量值。
ITS 研究的设计、方法、分析和报告的许多方面都可以改进,特别是要更详细地描述统计方法和处理自相关的方法。需要更多关于 ITS 研究的实施和报告的指导,以改进这种研究设计。