Steve Bennett1, Tamiza Parpia, Richard Hayes, Simon Cousens. 1. MRC Tropical Epidemiology Group, Department of Infectious and Tropical Diseases, London School of Hygiene and Tropical Medicine, Keppel St, London WC1E 7HT, UK.
Abstract
BACKGROUND: The published literature on cluster randomized trials focuses on outcomes that are either continuous or binary. In many trials, the outcome is an incidence rate, such as mortality, based on person-years data. In this paper we review methods for the analysis of such data in cluster randomized trials and present some simple approaches. METHODS: We discuss the choice of the measure of intervention effect and present methods for confidence interval estimation and hypothesis testing which are conceptually simple and easy to perform using standard statistical software. The method proposed for hypothesis testing applies a t-test to cluster observations. To control confounding, a Poisson regression model is fitted to the data incorporating all covariates except intervention status, and the analysis is carried out on the residuals from this model. The methods are presented for unpaired data, and extensions to paired or stratified clusters are outlined. RESULTS: The methods are evaluated by simulation and illustrated by application to data from a trial of the effect of insecticide-impregnated bednets on child mortality. CONCLUSIONS: The techniques provide a straightforward approach to the analysis of incidence rates in cluster randomized trials. Both the unadjusted analysis and the analysis adjusting for confounders are shown to be robust, even for very small numbers of clusters, in situations that are likely to arise in randomized trials.
BACKGROUND: The published literature on cluster randomized trials focuses on outcomes that are either continuous or binary. In many trials, the outcome is an incidence rate, such as mortality, based on person-years data. In this paper we review methods for the analysis of such data in cluster randomized trials and present some simple approaches. METHODS: We discuss the choice of the measure of intervention effect and present methods for confidence interval estimation and hypothesis testing which are conceptually simple and easy to perform using standard statistical software. The method proposed for hypothesis testing applies a t-test to cluster observations. To control confounding, a Poisson regression model is fitted to the data incorporating all covariates except intervention status, and the analysis is carried out on the residuals from this model. The methods are presented for unpaired data, and extensions to paired or stratified clusters are outlined. RESULTS: The methods are evaluated by simulation and illustrated by application to data from a trial of the effect of insecticide-impregnated bednets on child mortality. CONCLUSIONS: The techniques provide a straightforward approach to the analysis of incidence rates in cluster randomized trials. Both the unadjusted analysis and the analysis adjusting for confounders are shown to be robust, even for very small numbers of clusters, in situations that are likely to arise in randomized trials.
Authors: A C Miller; J E Golub; S C Cavalcante; B Durovni; L H Moulton; Z Fonseca; D Arduini; R E Chaisson; E C C Soares Journal: Int J Tuberc Lung Dis Date: 2010-06 Impact factor: 2.373
Authors: Din Syafruddin; Michael J Bangs; Dian Sidik; Iqbal Elyazar; Puji B S Asih; Krisin Chan; Siti Nurleila; Christian Nixon; Joko Hendarto; Isra Wahid; Hasanuddin Ishak; Claus Bøgh; John P Grieco; Nicole L Achee; J Kevin Baird Journal: Am J Trop Med Hyg Date: 2014-10-13 Impact factor: 2.345
Authors: Lucky G Ngwira; Elizabeth L Corbett; McEwen Khundi; Grace L Barnes; Austin Nkhoma; Michael Murowa; Silvia Cohn; Lawrence H Moulton; Richard E Chaisson; David W Dowdy Journal: Clin Infect Dis Date: 2019-03-19 Impact factor: 9.079
Authors: Kalifa A Bojang; Francis Akor; Lesong Conteh; Emily Webb; Ousman Bittaye; David J Conway; Momodou Jasseh; Virginia Wiseman; Paul J Milligan; Brian Greenwood Journal: PLoS Med Date: 2011-02-01 Impact factor: 11.069
Authors: Margaret Pinder; Musa Jawara; Lamin B S Jarju; Ballah Kandeh; David Jeffries; Manuel F Lluberas; Jenny Mueller; David Parker; Kalifa Bojang; David J Conway; Steve W Lindsay Journal: Trials Date: 2011-06-10 Impact factor: 2.279
Authors: Sharon Tsui; Caitlin E Kennedy; Lawrence H Moulton; Larry W Chang; Jason E Farley; Kwasi Torpey; Eric van Praag; Olivier Koole; Nathan Ford; Fred Wabwire-Mangen; Julie A Denison Journal: Trop Med Int Health Date: 2021-08-08 Impact factor: 2.622