Abstract
Background: The Interrupted Time Series (ITS) is a robust design for evaluating public health and policy interventions or exposures when randomisation may be infeasible. Several statistical methods are available for the analysis and meta-analysis of ITS studies. We sought to empirically compare available methods when applied to real-world ITS data. Methods: We sourced ITS data from published meta-analyses to create an online data repository. Each dataset was re-analysed using two ITS estimation methods. The level- and slope-change effect estimates (and standard errors) were calculated and combined using fixed-effect and four random-effects meta-analysis methods. We examined differences in meta-analytic level- and slope-change estimates, their 95% confidence intervals, p-values, and estimates of heterogeneity across the statistical methods. Results: Of 40 eligible meta-analyses, data from 17 meta-analyses including 282 ITS studies were obtained (predominantly investigating the effects of public health interruptions (88%)) and analysed. We found that on average, the meta-analytic effect estimates, their standard errors and between-study variances were not sensitive to meta-analysis method choice, irrespective of the ITS analysis method. However, across ITS analysis methods, for any given meta-analysis, there could be small to moderate differences in meta-analytic effect estimates, and important differences in the meta-analytic standard errors. Furthermore, the confidence interval widths and p-values for the meta-analytic effect estimates varied depending on the choice of confidence interval method and ITS analysis method. Conclusions: Our empirical study showed that meta-analysis effect estimates, their standard errors, confidence interval widths and p-values can be affected by statistical method choice. These differences may importantly impact interpretations and conclusions of a meta-analysis and suggest that the statistical methods are not interchangeable in practice.
| Original language | English |
|---|---|
| Article number | 31 |
| Number of pages | 21 |
| Journal | BMC Medical Research Methodology |
| Volume | 24 |
| Issue number | 1 |
| DOIs | |
| Publication status | Published - 10 Feb 2024 |
UN SDGs
This output contributes to the following UN Sustainable Development Goals (SDGs)
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SDG 3 Good Health and Well-being
Keywords
- Meta-analysis
- Interrupted time series
- Segmented regression
- Statistical methods
- Empirical study
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Improving evidence synthesis methods to enhance decision making about public health and policy interventions
McKenzie, J. (Primary Chief Investigator (PCI))
NHMRC - National Health and Medical Research Council (Australia)
1/01/22 → 31/12/26
Project: Research
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How should we analyse, synthesize, and interpret evidence from interrupted time series studies? Making the best use of available evidence
McKenzie, J. (Primary Chief Investigator (PCI)), Forbes, A. (Chief Investigator (CI)), Taljaard, M. (Chief Investigator (CI)), Cheng, A. (Chief Investigator (CI)), Grimshaw, J. M. (Chief Investigator (CI)), Bero, L. (Chief Investigator (CI)) & Karahalios, E. (Chief Investigator (CI))
NHMRC - National Health and Medical Research Council (Australia)
1/01/18 → 31/12/21
Project: Research
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