Marginal modeling in community randomized trials with rare events: Utilization of the negative binomial regression model.

Cluster randomized trial empirical covariance matrix generalized estimating equations intra-cluster correlation coefficient quasi-likelihood

Journal

Clinical trials (London, England)
ISSN: 1740-7753
Titre abrégé: Clin Trials
Pays: England
ID NLM: 101197451

Informations de publication

Date de publication:
04 2022
Historique:
pubmed: 8 1 2022
medline: 27 4 2022
entrez: 7 1 2022
Statut: ppublish

Résumé

This work is motivated by the HEALing Communities Study, which is a post-test only cluster randomized trial in which communities are randomized to two different trial arms. The primary interest is in reducing opioid overdose fatalities, which will be collected as a count outcome at the community level. Communities range in size from thousands to over one million residents, and fatalities are expected to be rare. Traditional marginal modeling approaches in the cluster randomized trial literature include the use of generalized estimating equations with an exchangeable correlation structure when utilizing subject-level data, or analogously quasi-likelihood based on an over-dispersed binomial variance when utilizing community-level data. These approaches account for and estimate the intra-cluster correlation coefficient, which should be provided in the results from a cluster randomized trial. Alternatively, the coefficient of variation or R coefficient could be reported. In this article, we show that negative binomial regression can also be utilized when communities are large and events are rare. The objectives of this article are (1) to show that the negative binomial regression approach targets the same marginal regression parameter(s) as an over-dispersed binomial model and to explain why the estimates may differ; (2) to derive formulas relating the negative binomial overdispersion parameter k with the intra-cluster correlation coefficient, coefficient of variation, and R coefficient; and (3) analyze pre-intervention data from the HEALing Communities Study to demonstrate and contrast models and to show how to report the intra-cluster correlation coefficient, coefficient of variation, and R coefficient when utilizing negative binomial regression. Negative binomial and over-dispersed binomial regression modeling are contrasted in terms of model setup, regression parameter estimation, and formulation of the overdispersion parameter. Three specific models are used to illustrate concepts and address the third objective. The negative binomial regression approach targets the same marginal regression parameter(s) as an over-dispersed binomial model, although estimates may differ. Practical differences arise in regard to how overdispersion, and hence the intra-cluster correlation coefficient is modeled. The negative binomial overdispersion parameter is approximately equal to the ratio of the intra-cluster correlation coefficient and marginal probability, the square of the coefficient of variation, and the R coefficient minus 1. As a result, estimates corresponding to all four of these different types of overdispersion parameterizations can be reported when utilizing negative binomial regression. Negative binomial regression provides a valid, practical, alternative approach to the analysis of count data, and corresponding reporting of overdispersion parameters, from community randomized trials in which communities are large and events are rare.

Sections du résumé

BACKGROUND/AIMS
This work is motivated by the HEALing Communities Study, which is a post-test only cluster randomized trial in which communities are randomized to two different trial arms. The primary interest is in reducing opioid overdose fatalities, which will be collected as a count outcome at the community level. Communities range in size from thousands to over one million residents, and fatalities are expected to be rare. Traditional marginal modeling approaches in the cluster randomized trial literature include the use of generalized estimating equations with an exchangeable correlation structure when utilizing subject-level data, or analogously quasi-likelihood based on an over-dispersed binomial variance when utilizing community-level data. These approaches account for and estimate the intra-cluster correlation coefficient, which should be provided in the results from a cluster randomized trial. Alternatively, the coefficient of variation or R coefficient could be reported. In this article, we show that negative binomial regression can also be utilized when communities are large and events are rare. The objectives of this article are (1) to show that the negative binomial regression approach targets the same marginal regression parameter(s) as an over-dispersed binomial model and to explain why the estimates may differ; (2) to derive formulas relating the negative binomial overdispersion parameter k with the intra-cluster correlation coefficient, coefficient of variation, and R coefficient; and (3) analyze pre-intervention data from the HEALing Communities Study to demonstrate and contrast models and to show how to report the intra-cluster correlation coefficient, coefficient of variation, and R coefficient when utilizing negative binomial regression.
METHODS
Negative binomial and over-dispersed binomial regression modeling are contrasted in terms of model setup, regression parameter estimation, and formulation of the overdispersion parameter. Three specific models are used to illustrate concepts and address the third objective.
RESULTS
The negative binomial regression approach targets the same marginal regression parameter(s) as an over-dispersed binomial model, although estimates may differ. Practical differences arise in regard to how overdispersion, and hence the intra-cluster correlation coefficient is modeled. The negative binomial overdispersion parameter is approximately equal to the ratio of the intra-cluster correlation coefficient and marginal probability, the square of the coefficient of variation, and the R coefficient minus 1. As a result, estimates corresponding to all four of these different types of overdispersion parameterizations can be reported when utilizing negative binomial regression.
CONCLUSION
Negative binomial regression provides a valid, practical, alternative approach to the analysis of count data, and corresponding reporting of overdispersion parameters, from community randomized trials in which communities are large and events are rare.

Identifiants

pubmed: 34991359
doi: 10.1177/17407745211063479
pmc: PMC9038610
mid: NIHMS1756503
doi:

Banques de données

ClinicalTrials.gov
['NCT04111939']

Types de publication

Journal Article Research Support, N.I.H., Extramural

Langues

eng

Sous-ensembles de citation

IM

Pagination

162-171

Subventions

Organisme : NIDA NIH HHS
ID : UM1 DA049394
Pays : United States
Organisme : NIDA NIH HHS
ID : UM1 DA049415
Pays : United States
Organisme : NIDA NIH HHS
ID : R01 DA041063
Pays : United States
Organisme : NIDA NIH HHS
ID : UM1 DA049412
Pays : United States
Organisme : NIDA NIH HHS
ID : UM1 DA049417
Pays : United States
Organisme : NIDA NIH HHS
ID : UM1 DA049406
Pays : United States

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Auteurs

Philip M Westgate (PM)

Department of Biostatistics, College of Public Health, University of Kentucky, Lexington, KY, USA.

Debbie M Cheng (DM)

Department of Biostatistics, School of Public Health, Boston University, Boston, MA, USA.

Daniel J Feaster (DJ)

Department of Public Health Sciences, Miller School of Medicine, University of Miami, Coral Gables, FL, USA.

Soledad Fernández (S)

Department of Biomedical Informatics, College of Medicine, The Ohio State University, Columbus, OH, USA.

Abigail B Shoben (AB)

Division of Biostatistics, College of Public Health, The Ohio State University, Columbus, OH, USA.

Nathan Vandergrift (N)

RTI International, Research Triangle Park, NC, USA.

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Classifications MeSH