Explaining the variation in the attained power of a stepped-wedge trial with unequal cluster sizes
Abstract Background In a cross-sectional stepped-wedge trial with unequal cluster sizes, attained power in the trial depends on the realized allocation of the clusters. This attained power may differ from the expected power calculated using standard formulae by averaging the attained powers over all...
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doaj-a750c4ed7703443c8e5378b21a0b66022020-11-25T02:51:23ZengBMCBMC Medical Research Methodology1471-22882020-06-0120111410.1186/s12874-020-01036-5Explaining the variation in the attained power of a stepped-wedge trial with unequal cluster sizesYongdong Ouyang0Mohammad Ehsanul Karim1Paul Gustafson2Thalia S. Field3Hubert Wong4School of Population and Public Health, University of British ColumbiaSchool of Population and Public Health, University of British ColumbiaDepartment of Statistics, University of British ColumbiaVancouver Stroke Program, Faculty of Medicine, University of British ColumbiaSchool of Population and Public Health, University of British ColumbiaAbstract Background In a cross-sectional stepped-wedge trial with unequal cluster sizes, attained power in the trial depends on the realized allocation of the clusters. This attained power may differ from the expected power calculated using standard formulae by averaging the attained powers over all allocations the randomization algorithm can generate. We investigated the effect of design factors and allocation characteristics on attained power and developed models to predict attained power based on allocation characteristics. Method Based on data simulated and analyzed using linear mixed-effects models, we evaluated the distribution of attained powers under different scenarios with varying intraclass correlation coefficient (ICC) of the responses, coefficient of variation (CV) of the cluster sizes, number of cluster-size groups, distributions of group sizes, and number of clusters. We explored the relationship between attained power and two allocation characteristics: the individual-level correlation between treatment status and time period, and the absolute treatment group imbalance. When computational time was excessive due to a scenario having a large number of possible allocations, we developed regression models to predict attained power using the treatment-vs-time period correlation and absolute treatment group imbalance as predictors. Results The risk of attained power falling more than 5% below the expected or nominal power decreased as the ICC or number of clusters increased and as the CV decreased. Attained power was strongly affected by the treatment-vs-time period correlation. The absolute treatment group imbalance had much less impact on attained power. The attained power for any allocation was predicted accurately using a logistic regression model with the treatment-vs-time period correlation and the absolute treatment group imbalance as predictors. Conclusion In a stepped-wedge trial with unequal cluster sizes, the risk that randomization yields an allocation with inadequate attained power depends on the ICC, the CV of the cluster sizes, and number of clusters. To reduce the computational burden of simulating attained power for allocations, the attained power can be predicted via regression modeling. Trial designers can reduce the risk of low attained power by restricting the randomization algorithm to avoid allocations with large treatment-vs-time period correlations.http://link.springer.com/article/10.1186/s12874-020-01036-5Cluster randomized trialPower distributionTreatment-time period correlationTreatment group imbalance |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yongdong Ouyang Mohammad Ehsanul Karim Paul Gustafson Thalia S. Field Hubert Wong |
spellingShingle |
Yongdong Ouyang Mohammad Ehsanul Karim Paul Gustafson Thalia S. Field Hubert Wong Explaining the variation in the attained power of a stepped-wedge trial with unequal cluster sizes BMC Medical Research Methodology Cluster randomized trial Power distribution Treatment-time period correlation Treatment group imbalance |
author_facet |
Yongdong Ouyang Mohammad Ehsanul Karim Paul Gustafson Thalia S. Field Hubert Wong |
author_sort |
Yongdong Ouyang |
title |
Explaining the variation in the attained power of a stepped-wedge trial with unequal cluster sizes |
title_short |
Explaining the variation in the attained power of a stepped-wedge trial with unequal cluster sizes |
title_full |
Explaining the variation in the attained power of a stepped-wedge trial with unequal cluster sizes |
title_fullStr |
Explaining the variation in the attained power of a stepped-wedge trial with unequal cluster sizes |
title_full_unstemmed |
Explaining the variation in the attained power of a stepped-wedge trial with unequal cluster sizes |
title_sort |
explaining the variation in the attained power of a stepped-wedge trial with unequal cluster sizes |
publisher |
BMC |
series |
BMC Medical Research Methodology |
issn |
1471-2288 |
publishDate |
2020-06-01 |
description |
Abstract Background In a cross-sectional stepped-wedge trial with unequal cluster sizes, attained power in the trial depends on the realized allocation of the clusters. This attained power may differ from the expected power calculated using standard formulae by averaging the attained powers over all allocations the randomization algorithm can generate. We investigated the effect of design factors and allocation characteristics on attained power and developed models to predict attained power based on allocation characteristics. Method Based on data simulated and analyzed using linear mixed-effects models, we evaluated the distribution of attained powers under different scenarios with varying intraclass correlation coefficient (ICC) of the responses, coefficient of variation (CV) of the cluster sizes, number of cluster-size groups, distributions of group sizes, and number of clusters. We explored the relationship between attained power and two allocation characteristics: the individual-level correlation between treatment status and time period, and the absolute treatment group imbalance. When computational time was excessive due to a scenario having a large number of possible allocations, we developed regression models to predict attained power using the treatment-vs-time period correlation and absolute treatment group imbalance as predictors. Results The risk of attained power falling more than 5% below the expected or nominal power decreased as the ICC or number of clusters increased and as the CV decreased. Attained power was strongly affected by the treatment-vs-time period correlation. The absolute treatment group imbalance had much less impact on attained power. The attained power for any allocation was predicted accurately using a logistic regression model with the treatment-vs-time period correlation and the absolute treatment group imbalance as predictors. Conclusion In a stepped-wedge trial with unequal cluster sizes, the risk that randomization yields an allocation with inadequate attained power depends on the ICC, the CV of the cluster sizes, and number of clusters. To reduce the computational burden of simulating attained power for allocations, the attained power can be predicted via regression modeling. Trial designers can reduce the risk of low attained power by restricting the randomization algorithm to avoid allocations with large treatment-vs-time period correlations. |
topic |
Cluster randomized trial Power distribution Treatment-time period correlation Treatment group imbalance |
url |
http://link.springer.com/article/10.1186/s12874-020-01036-5 |
work_keys_str_mv |
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