In praise of Prais-Winsten: An evaluation of methods used to account for autocorrelation in interrupted time series.

C Bottomley ORCID logo; M Ooko; A Gasparrini ORCID logo; RH Keogh ORCID logo; (2023) In praise of Prais-Winsten: An evaluation of methods used to account for autocorrelation in interrupted time series. Statistics in medicine, 42 (8). pp. 1277-1288. ISSN 0277-6715 DOI: 10.1002/sim.9669
Copy

Interrupted time series are increasingly being used to assess the population impact of public health interventions. These data are usually correlated over time (auto correlated) and this must be accounted for in the analysis. Typically, this is done using either the Prais-Winsten method, the Newey-West method, or autoregressive-moving-average (ARMA) modeling. In this paper, we illustrate these methods via a study of pneumococcal vaccine introduction and explore their performance under 20 simulated autocorrelation scenarios with sample sizes ranging between 20 and 300. We show that in terms of mean square error, the Prais-Winsten and ARMA methods perform best, while in terms of coverage the Prais-Winsten method generally performs better than other methods. All three methods are unbiased. As well as having good statistical properties, the Prais-Winsten method is attractive because it is decision-free and produces a single measure of autocorrelation that can be compared between studies and used to guide sample size calculations. We would therefore encourage analysts to consider using this simple method to analyze interrupted time series.


picture_as_pdf
Bottomley_etal_2023_In-praise-of-prais-winsten.pdf
subject
Published Version
Available under Creative Commons: 4.0

View Download

Atom BibTeX OpenURL ContextObject in Span Multiline CSV OpenURL ContextObject Dublin Core Dublin Core MPEG-21 DIDL EndNote HTML Citation JSON MARC (ASCII) MARC (ISO 2709) METS MODS RDF+N3 RDF+N-Triples RDF+XML RIOXX2 XML Reference Manager Refer Simple Metadata ASCII Citation EP3 XML
Export

Downloads