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Methodological systematic review recommends improvements to conduct and reporting when meta-analysing interrupted time series studies

J Clin Epidemiol. 2022 Jan 16:S0895-4356(22)00012-9. doi: 10.1016/j.jclinepi.2022.01.010. Online ahead of print.

ABSTRACT

OBJECTIVES: Interrupted Time Series (ITS) are a type of non-randomised design commonly used to evaluate public health policy interventions, and the impact of exposures, at the population level. Meta-analysis may be used to combine results from ITS across studies (in the context of systematic reviews) or across sites within the same study. We aimed to examine the statistical approaches, methods, and completeness of reporting in reviews that meta-analyse results from ITS.

STUDY DESIGN AND SETTINGS: Eight electronic databases were searched to identify reviews (published 2000-2019) that meta-analysed at least two ITS. Characteristics of the included reviews, the statistical methods used to analyse the ITS and meta-analyse their results, effect measures, and risk of bias assessment tools were extracted.

RESULTS: Of the 4213 identified records, 54 reviews were included. Nearly all reviews (94%) used two-stage meta-analysis, most commonly fitting a random effects model (69%). Among the 41 reviews that re-analysed the ITS, linear regression (39%) and ARIMA (20%) were most commonly used; 38% adjusted for autocorrelation. The most common effect measure meta-analysed was an immediate level-change (46/54). Reporting of the statistical methods and ITS characteristics was often incomplete.

CONCLUSION: Improvement is needed in the conduct and reporting of reviews that meta-analyse results from ITS.

PMID:35045318 | DOI:10.1016/j.jclinepi.2022.01.010

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