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Get Free AccessThis article presents the CONSORT (consolidated standards of reporting trials) extension for cluster randomised crossover trials. A cluster randomised crossover trial involves randomisation of groups of individuals (known as clusters) to different sequences of interventions over time. The design has gained popularity in settings where cluster randomisation is required because it can largely overcome the loss in power due to clustering in parallel cluster trials. However, the design has many methodological complexities, requiring tailored reporting guidance. The guideline was developed using a survey and in-person consensus meeting, informed by a systematic review examining the quality of reporting in cluster randomised crossover trials and relevant CONSORT statements for individual, crossover, cluster, and stepped wedge designs. This article also provides recommended reporting items, along with explanations and examples.
Joanne E. McKenzie, Monica Taljaard, Karla Hemming, Sarah Arnup, Bruno Giraudeau, Sandra Eldridge, Richard Hooper, Brennan C Kahan, Tianjing Li, David Moher, Elizabeth L. Turner, Jeremy Grimshaw, Andrew Forbes (2025). Reporting of cluster randomised crossover trials: extension of the CONSORT 2010 statement with explanation and elaboration. , 388, DOI: https://doi.org/10.1136/bmj-2024-080472.
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Type
Article
Year
2025
Authors
13
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1136/bmj-2024-080472
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