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Estimating effective sample sizes using standard errors from appropriate analyses of cluster-randomized trials.

Anders Granholm1

  • 1Department of Intensive Care, Copenhagen University Hospital - Rigshospitalet, Copenhagen, Denmark; Section of Biostatistics, Department of Public Health, University of Copenhagen, Copenhagen, Denmark.

Journal of Clinical Epidemiology
|February 23, 2026
PubMed
Summary
This summary is machine-generated.

New methods estimate the effective sample size (ESS) for cluster-randomised trials (CRTs) without needing the intra-cluster correlation coefficient (ICC). These approaches improve the interpretation and evidence synthesis of CRTs.

Keywords:
AnalysisClinical trialsCluster-randomized trialsClusteringEffective sample sizesMeta-analysis

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Area of Science:

  • Biostatistics
  • Clinical Trials Methodology

Background:

  • Cluster-randomised trials (CRTs) often yield less information than individually randomised trials due to within-cluster correlation, leading to a lower effective sample size (ESS).
  • Ignoring clustering in analyses can result in biased estimates and overly precise statistical results (e.g., small p-values, narrow confidence intervals).
  • Estimating ESS using intra-cluster correlation coefficients (ICCs) is common, but ICCs are frequently unknown and must be assumed.

Purpose of the Study:

  • To present and evaluate two novel methods for estimating the ESS in CRTs.
  • To provide practical tools for analysing CRT data without requiring pre-specified ICCs.

Main Methods:

  • Two distinct approaches were developed to estimate ESS using standard errors from cluster-aware analyses.
  • Method 1 scales counts by the ratio of variances from cluster-aware versus simple analyses.
  • Method 2 employs an optimization procedure to adjust event proportions or group means.

Main Results:

  • Both presented methods successfully prevent over-precision in analyses of group-level summary data from CRTs.
  • The second method additionally corrects for potential bias introduced by ignoring clustering in the analysis.
  • Comparisons were made using data from three example CRTs against analyses that did not account for clustering.

Conclusions:

  • The proposed methods offer valuable tools for interpreting and synthesizing evidence from CRTs.
  • These approaches are applicable even when ICCs are not reported, provided appropriate cluster-aware analyses are performed.