Author
Listed:
- Joseph Biggs
(London School of Hygiene and Tropical Medicine (LSHTM))
- Joseph D. Challenger
(Imperial College London)
- Dominic Dee
(Imperial College London)
- Eldo Elobolobo
(Centro de Investigaçao em Saúde de Manhiça)
- Carlos Chaccour
(Barcelona Institute for Global Health (ISGlobal)
CIBER de Enfermedades Infecciosas
Universidad de Navarra)
- Francisco Saute
(Centro de Investigaçao em Saúde de Manhiça)
- Sarah G. Staedke
(Liverpool School of Tropical Medicine
Kenya Medical Research Institute (KEMRI) Centre for Global Health Research)
- Sibo Vilakati
(Ministry of Health)
- Jade Benjamin Chung
(Stanford University
Chan Zuckerberg Biohub)
- Michelle S. Hsiang
(Chan Zuckerberg Biohub
San Francisco (UCSF)
San Francisco (UCSF))
- Edgard Diniba Dabira
(Disease Control & Elimination Theme)
- Annette Erhart
(Disease Control & Elimination Theme)
- Umberto D’Alessandro
(Disease Control & Elimination Theme)
- Rupam Tripura
(Mahidol University
University of Oxford)
- Thomas J. Peto
(Mahidol University
University of Oxford)
- Lorenz Seidlein
(Mahidol University
University of Oxford)
- Mavuto Mukaka
(Mahidol University
University of Oxford)
- Jacklin Mosha
(National Institute for Medical Research)
- Natacha Protopopoff
(Swiss Tropical & Public Health Institute
University of Basel)
- Manfred Accrombessi
(Malaria department
Clinical Research department)
- Richard Hayes
(London School of Hygiene and Tropical Medicine (LSHTM))
- Thomas S. Churcher
(Imperial College London)
- Jackie Cook
(London School of Hygiene and Tropical Medicine (LSHTM))
Abstract
Cluster randomised trials (CRTs) are important tools for evaluating the community-wide effect of malaria interventions. During the design stage, CRT sample sizes need to be inflated to account for the cluster heterogeneity in measured outcomes. The coefficient of variation (k), a measure of such heterogeneity, is typically used in malaria CRTs yet is often predicted without prior data. Underestimation of k decreases study power, thus increases the probability of generating null results. In this meta-analysis of cluster-summary data from 24 malaria CRTs, we calculate true prevalence and incidence k values using methods-of-moments and regression modelling approaches. Using random effects regression modelling, we investigate the impact of empirical k values on original trial power and explore factors associated with elevated k. Results show empirical estimates of k often exceed those used in sample size calculations, which reduces study power and effect size precision. Elevated k values are associated with incidence outcomes (compared to prevalence), lower endemicity settings, and uneven intervention coverage across clusters. Study findings can enhance the robustness of future malaria CRT sample size calculations by providing informed k estimates based on expected prevalence or incidence, in the absence of cluster-level data.
Suggested Citation
Joseph Biggs & Joseph D. Challenger & Dominic Dee & Eldo Elobolobo & Carlos Chaccour & Francisco Saute & Sarah G. Staedke & Sibo Vilakati & Jade Benjamin Chung & Michelle S. Hsiang & Edgard Diniba Dab, 2025.
"Characterisation of between-cluster heterogeneity in malaria cluster randomised trials to inform future sample size calculations,"
Nature Communications, Nature, vol. 16(1), pages 1-13, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-61502-w
DOI: 10.1038/s41467-025-61502-w
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