Skip to main content
Top
Published in: Systematic Reviews 1/2021

Open Access 01-12-2021 | Research

Bayesian statistics in the design and analysis of cluster randomised controlled trials and their reporting quality: a methodological systematic review

Authors: Benjamin G. Jones, Adam J. Streeter, Amy Baker, Rana Moyeed, Siobhan Creanor

Published in: Systematic Reviews | Issue 1/2021

Login to get access

Abstract

Background

In a cluster randomised controlled trial (CRCT), randomisation units are “clusters” such as schools or GP practices. This has methodological implications for study design and statistical analysis, since clustering often leads to correlation between observations which, if not accounted for, can lead to spurious conclusions of efficacy/effectiveness. Bayesian methodology offers a flexible, intuitive framework to deal with such issues, but its use within CRCT design and analysis appears limited. This review aims to explore and quantify the use of Bayesian methodology in the design and analysis of CRCTs, and appraise the quality of reporting against CONSORT guidelines.

Methods

We sought to identify all reported/published CRCTs that incorporated Bayesian methodology and papers reporting development of new Bayesian methodology in this context, without restriction on publication date or location. We searched Medline and Embase and the Cochrane Central Register of Controlled Trials (CENTRAL). Reporting quality metrics according to the CONSORT extension for CRCTs were collected, as well as demographic data, type and nature of Bayesian methodology used, journal endorsement of CONSORT guidelines, and statistician involvement.

Results

Twenty-seven publications were included, six from an additional hand search. Eleven (40.7%) were reports of CRCT results: seven (25.9%) were primary results papers and four (14.8%) reported secondary results. Thirteen papers (48.1%) reported Bayesian methodological developments, the remaining three (11.1%) compared different methods. Four (57.1%) of the primary results papers described the method of sample size calculation; none clearly accounted for clustering. Six (85.7%) clearly accounted for clustering in the analysis. All results papers reported use of Bayesian methods in the analysis but none in the design or sample size calculation.

Conclusions

The popularity of the CRCT design has increased rapidly in the last twenty years but this has not been mirrored by an uptake of Bayesian methodology in this context. Of studies using Bayesian methodology, there were some differences in reporting quality compared to CRCTs in general, but this study provided insufficient data to draw firm conclusions. There is an opportunity to further develop Bayesian methodology for the design and analysis of CRCTs in order to expand the accessibility, availability, and, ultimately, use of this approach.
Literature
1.
go back to reference Eldridge SM, Kerry S. A Practical guide to cluster randomised trials in health services research: Wiley; 2012. Eldridge SM, Kerry S. A Practical guide to cluster randomised trials in health services research: Wiley; 2012.
14.
go back to reference Ivers NM, Taljaard M, Dixon S, Bennett C, McRae A, Taleban J, et al. Impact of CONSORT extension for cluster randomised trials on quality of reporting and study methodology: review of random sample of 300 trials, 2000-8. BMJ. 2011;343(sep26 1):d5886. https://doi.org/10.1136/BMJ.D5886. Ivers NM, Taljaard M, Dixon S, Bennett C, McRae A, Taleban J, et al. Impact of CONSORT extension for cluster randomised trials on quality of reporting and study methodology: review of random sample of 300 trials, 2000-8. BMJ. 2011;343(sep26 1):d5886. https://​doi.​org/​10.​1136/​BMJ.​D5886.
17.
go back to reference Jones B. The use of Bayesian statistics in the design and analysis of cluster randomised controlled trials and their methodological and reporting quality: a protocol for an international methodological review. Open Science Framework. Published 2018. https://osf.io/2azrc/ Jones B. The use of Bayesian statistics in the design and analysis of cluster randomised controlled trials and their methodological and reporting quality: a protocol for an international methodological review. Open Science Framework. Published 2018. https://​osf.​io/​2azrc/​
20.
go back to reference Taljaard M, McGowan J, Grimshaw JM, Brehaut JC, McRae A, Eccles MP, et al. Electronic search strategies to identify reports of cluster randomized trials in MEDLINE: Low precision will improve with adherence to reporting standards. BMC Med Res Methodol. 2010;10(1). https://doi.org/10.1186/1471-2288-10-15. Taljaard M, McGowan J, Grimshaw JM, Brehaut JC, McRae A, Eccles MP, et al. Electronic search strategies to identify reports of cluster randomized trials in MEDLINE: Low precision will improve with adherence to reporting standards. BMC Med Res Methodol. 2010;10(1). https://​doi.​org/​10.​1186/​1471-2288-10-15.
30.
go back to reference Spiegelhalter DJ, Abrams KR, Myles JP. Bayesian approaches to clinical trials and health-care evaluation. (Senn S, Barnett V, eds.). John Wiley & Sons, Ltd; 2004. Spiegelhalter DJ, Abrams KR, Myles JP. Bayesian approaches to clinical trials and health-care evaluation. (Senn S, Barnett V, eds.). John Wiley & Sons, Ltd; 2004.
Metadata
Title
Bayesian statistics in the design and analysis of cluster randomised controlled trials and their reporting quality: a methodological systematic review
Authors
Benjamin G. Jones
Adam J. Streeter
Amy Baker
Rana Moyeed
Siobhan Creanor
Publication date
01-12-2021
Publisher
BioMed Central
Published in
Systematic Reviews / Issue 1/2021
Electronic ISSN: 2046-4053
DOI
https://doi.org/10.1186/s13643-021-01637-1

Other articles of this Issue 1/2021

Systematic Reviews 1/2021 Go to the issue