Analysis and reporting of stratified cluster randomized trials—a systematic survey

Abstract Background In order to correctly assess the effect of intervention from stratified cluster randomized trials (CRTs), it is necessary to adjust for both clustering and stratification, as failure to do so leads to misleading conclusions about the intervention effect. We have conducted a syste...

Full description

Bibliographic Details
Main Authors: Sayem Borhan, Alexandra Papaioannou, Jinhui Ma, Jonathan Adachi, Lehana Thabane
Format: Article
Language:English
Published: BMC 2020-11-01
Series:Trials
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13063-020-04850-w
id doaj-984aed504f744433a51248d8e48b30b5
record_format Article
spelling doaj-984aed504f744433a51248d8e48b30b52020-11-25T04:11:48ZengBMCTrials1745-62152020-11-012111810.1186/s13063-020-04850-wAnalysis and reporting of stratified cluster randomized trials—a systematic surveySayem Borhan0Alexandra Papaioannou1Jinhui Ma2Jonathan Adachi3Lehana Thabane4Department of Health Research Methods, Evidence and Impact, McMaster UniversityDepartment of Health Research Methods, Evidence and Impact, McMaster UniversityDepartment of Health Research Methods, Evidence and Impact, McMaster UniversityGERAS Centre, Hamilton Health SciencesDepartment of Health Research Methods, Evidence and Impact, McMaster UniversityAbstract Background In order to correctly assess the effect of intervention from stratified cluster randomized trials (CRTs), it is necessary to adjust for both clustering and stratification, as failure to do so leads to misleading conclusions about the intervention effect. We have conducted a systematic survey to examine the current practices about analysis and reporting of stratified CRTs. Method We used the search terms to identify the stratified CRTs from MEDLINE since the inception to July 2019. In phase 1, we screened the title and abstract for English-only studies and selected, including the main results paper of the identified protocols, for the next phase. In phase 2, we screened the full text and selected studies for data abstraction. The data abstraction form was piloted and developed using the REDCap. We abstracted data on multiple design and methodological aspects of the study including whether the primary method adjusted for both clustering and stratification, reporting of sample size, randomization, and results. Results We screened 2686 studies in the phase 1 and selected 286 studies for phase 2—among them 185 studies were selected for data abstraction. Most of the selected studies were two-arm 140/185 (76%) and parallel-group 165/185 (89%) trials. Among these 185 studies, 27 (15%) of them did not provide any sample size or power calculation, while 105 (57%) studies did not mention any method used for randomization within each stratum. Further, 43 (23%) and 150 (81%) of 185 studies did not provide the definition of all the strata, while more than 60% of the studies did not include all the stratification variable(s) in the flow chart or baseline characteristics table. More than half 114/185 (62%) of the studies did not adjust the primary method for both clustering and stratification. Conclusion Stratification helps to achieve the balance among intervention groups. However, to correctly assess the intervention effect from stratified CRTs, it is important to adjust the primary analysis for both stratification and clustering. There are significant deficiencies in the reporting of methodological aspects of stratified CRTs, which require substantial improvements in several areas including definition of strata, inclusion of stratification variable(s) in the flow chart or baseline characteristics table, and reporting the stratum-specific number of clusters and individuals in the intervention groups.http://link.springer.com/article/10.1186/s13063-020-04850-wStratificationCluster randomized trialSystematic surveyStratified clusterRandomized trial
collection DOAJ
language English
format Article
sources DOAJ
author Sayem Borhan
Alexandra Papaioannou
Jinhui Ma
Jonathan Adachi
Lehana Thabane
spellingShingle Sayem Borhan
Alexandra Papaioannou
Jinhui Ma
Jonathan Adachi
Lehana Thabane
Analysis and reporting of stratified cluster randomized trials—a systematic survey
Trials
Stratification
Cluster randomized trial
Systematic survey
Stratified cluster
Randomized trial
author_facet Sayem Borhan
Alexandra Papaioannou
Jinhui Ma
Jonathan Adachi
Lehana Thabane
author_sort Sayem Borhan
title Analysis and reporting of stratified cluster randomized trials—a systematic survey
title_short Analysis and reporting of stratified cluster randomized trials—a systematic survey
title_full Analysis and reporting of stratified cluster randomized trials—a systematic survey
title_fullStr Analysis and reporting of stratified cluster randomized trials—a systematic survey
title_full_unstemmed Analysis and reporting of stratified cluster randomized trials—a systematic survey
title_sort analysis and reporting of stratified cluster randomized trials—a systematic survey
publisher BMC
series Trials
issn 1745-6215
publishDate 2020-11-01
description Abstract Background In order to correctly assess the effect of intervention from stratified cluster randomized trials (CRTs), it is necessary to adjust for both clustering and stratification, as failure to do so leads to misleading conclusions about the intervention effect. We have conducted a systematic survey to examine the current practices about analysis and reporting of stratified CRTs. Method We used the search terms to identify the stratified CRTs from MEDLINE since the inception to July 2019. In phase 1, we screened the title and abstract for English-only studies and selected, including the main results paper of the identified protocols, for the next phase. In phase 2, we screened the full text and selected studies for data abstraction. The data abstraction form was piloted and developed using the REDCap. We abstracted data on multiple design and methodological aspects of the study including whether the primary method adjusted for both clustering and stratification, reporting of sample size, randomization, and results. Results We screened 2686 studies in the phase 1 and selected 286 studies for phase 2—among them 185 studies were selected for data abstraction. Most of the selected studies were two-arm 140/185 (76%) and parallel-group 165/185 (89%) trials. Among these 185 studies, 27 (15%) of them did not provide any sample size or power calculation, while 105 (57%) studies did not mention any method used for randomization within each stratum. Further, 43 (23%) and 150 (81%) of 185 studies did not provide the definition of all the strata, while more than 60% of the studies did not include all the stratification variable(s) in the flow chart or baseline characteristics table. More than half 114/185 (62%) of the studies did not adjust the primary method for both clustering and stratification. Conclusion Stratification helps to achieve the balance among intervention groups. However, to correctly assess the intervention effect from stratified CRTs, it is important to adjust the primary analysis for both stratification and clustering. There are significant deficiencies in the reporting of methodological aspects of stratified CRTs, which require substantial improvements in several areas including definition of strata, inclusion of stratification variable(s) in the flow chart or baseline characteristics table, and reporting the stratum-specific number of clusters and individuals in the intervention groups.
topic Stratification
Cluster randomized trial
Systematic survey
Stratified cluster
Randomized trial
url http://link.springer.com/article/10.1186/s13063-020-04850-w
work_keys_str_mv AT sayemborhan analysisandreportingofstratifiedclusterrandomizedtrialsasystematicsurvey
AT alexandrapapaioannou analysisandreportingofstratifiedclusterrandomizedtrialsasystematicsurvey
AT jinhuima analysisandreportingofstratifiedclusterrandomizedtrialsasystematicsurvey
AT jonathanadachi analysisandreportingofstratifiedclusterrandomizedtrialsasystematicsurvey
AT lehanathabane analysisandreportingofstratifiedclusterrandomizedtrialsasystematicsurvey
_version_ 1724416854136455168