Cargando…

Assessment and Implication of Prognostic Imbalance in Randomized Controlled Trials with a Binary Outcome – A Simulation Study

BACKGROUND: Chance imbalance in baseline prognosis of a randomized controlled trial can lead to over or underestimation of treatment effects, particularly in trials with small sample sizes. Our study aimed to (1) evaluate the probability of imbalance in a binary prognostic factor (PF) between two tr...

Descripción completa

Detalles Bibliográficos
Autores principales: Chu, Rong, Walter, Stephen D., Guyatt, Gordon, Devereaux, P. J., Walsh, Michael, Thorlund, Kristian, Thabane, Lehana
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3358303/
https://www.ncbi.nlm.nih.gov/pubmed/22629322
http://dx.doi.org/10.1371/journal.pone.0036677
_version_ 1782233770697424896
author Chu, Rong
Walter, Stephen D.
Guyatt, Gordon
Devereaux, P. J.
Walsh, Michael
Thorlund, Kristian
Thabane, Lehana
author_facet Chu, Rong
Walter, Stephen D.
Guyatt, Gordon
Devereaux, P. J.
Walsh, Michael
Thorlund, Kristian
Thabane, Lehana
author_sort Chu, Rong
collection PubMed
description BACKGROUND: Chance imbalance in baseline prognosis of a randomized controlled trial can lead to over or underestimation of treatment effects, particularly in trials with small sample sizes. Our study aimed to (1) evaluate the probability of imbalance in a binary prognostic factor (PF) between two treatment arms, (2) investigate the impact of prognostic imbalance on the estimation of a treatment effect, and (3) examine the effect of sample size (n) in relation to the first two objectives. METHODS: We simulated data from parallel-group trials evaluating a binary outcome by varying the risk of the outcome, effect of the treatment, power and prevalence of the PF, and n. Logistic regression models with and without adjustment for the PF were compared in terms of bias, standard error, coverage of confidence interval and statistical power. RESULTS: For a PF with a prevalence of 0.5, the probability of a difference in the frequency of the PF≥5% reaches 0.42 with 125/arm. Ignoring a strong PF (relative risk = 5) leads to underestimating the strength of a moderate treatment effect, and the underestimate is independent of n when n is >50/arm. Adjusting for such PF increases statistical power. If the PF is weak (RR = 2), adjustment makes little difference in statistical inference. Conditional on a 5% imbalance of a powerful PF, adjustment reduces the likelihood of large bias. If an absolute measure of imbalance ≥5% is deemed important, including 1000 patients/arm provides sufficient protection against such an imbalance. Two thousand patients/arm may provide an adequate control against large random deviations in treatment effect estimation in the presence of a powerful PF. CONCLUSIONS: The probability of prognostic imbalance in small trials can be substantial. Covariate adjustment improves estimation accuracy and statistical power, and hence should be performed when strong PFs are observed.
format Online
Article
Text
id pubmed-3358303
institution National Center for Biotechnology Information
language English
publishDate 2012
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-33583032012-05-24 Assessment and Implication of Prognostic Imbalance in Randomized Controlled Trials with a Binary Outcome – A Simulation Study Chu, Rong Walter, Stephen D. Guyatt, Gordon Devereaux, P. J. Walsh, Michael Thorlund, Kristian Thabane, Lehana PLoS One Research Article BACKGROUND: Chance imbalance in baseline prognosis of a randomized controlled trial can lead to over or underestimation of treatment effects, particularly in trials with small sample sizes. Our study aimed to (1) evaluate the probability of imbalance in a binary prognostic factor (PF) between two treatment arms, (2) investigate the impact of prognostic imbalance on the estimation of a treatment effect, and (3) examine the effect of sample size (n) in relation to the first two objectives. METHODS: We simulated data from parallel-group trials evaluating a binary outcome by varying the risk of the outcome, effect of the treatment, power and prevalence of the PF, and n. Logistic regression models with and without adjustment for the PF were compared in terms of bias, standard error, coverage of confidence interval and statistical power. RESULTS: For a PF with a prevalence of 0.5, the probability of a difference in the frequency of the PF≥5% reaches 0.42 with 125/arm. Ignoring a strong PF (relative risk = 5) leads to underestimating the strength of a moderate treatment effect, and the underestimate is independent of n when n is >50/arm. Adjusting for such PF increases statistical power. If the PF is weak (RR = 2), adjustment makes little difference in statistical inference. Conditional on a 5% imbalance of a powerful PF, adjustment reduces the likelihood of large bias. If an absolute measure of imbalance ≥5% is deemed important, including 1000 patients/arm provides sufficient protection against such an imbalance. Two thousand patients/arm may provide an adequate control against large random deviations in treatment effect estimation in the presence of a powerful PF. CONCLUSIONS: The probability of prognostic imbalance in small trials can be substantial. Covariate adjustment improves estimation accuracy and statistical power, and hence should be performed when strong PFs are observed. Public Library of Science 2012-05-22 /pmc/articles/PMC3358303/ /pubmed/22629322 http://dx.doi.org/10.1371/journal.pone.0036677 Text en Chu et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Chu, Rong
Walter, Stephen D.
Guyatt, Gordon
Devereaux, P. J.
Walsh, Michael
Thorlund, Kristian
Thabane, Lehana
Assessment and Implication of Prognostic Imbalance in Randomized Controlled Trials with a Binary Outcome – A Simulation Study
title Assessment and Implication of Prognostic Imbalance in Randomized Controlled Trials with a Binary Outcome – A Simulation Study
title_full Assessment and Implication of Prognostic Imbalance in Randomized Controlled Trials with a Binary Outcome – A Simulation Study
title_fullStr Assessment and Implication of Prognostic Imbalance in Randomized Controlled Trials with a Binary Outcome – A Simulation Study
title_full_unstemmed Assessment and Implication of Prognostic Imbalance in Randomized Controlled Trials with a Binary Outcome – A Simulation Study
title_short Assessment and Implication of Prognostic Imbalance in Randomized Controlled Trials with a Binary Outcome – A Simulation Study
title_sort assessment and implication of prognostic imbalance in randomized controlled trials with a binary outcome – a simulation study
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3358303/
https://www.ncbi.nlm.nih.gov/pubmed/22629322
http://dx.doi.org/10.1371/journal.pone.0036677
work_keys_str_mv AT churong assessmentandimplicationofprognosticimbalanceinrandomizedcontrolledtrialswithabinaryoutcomeasimulationstudy
AT walterstephend assessmentandimplicationofprognosticimbalanceinrandomizedcontrolledtrialswithabinaryoutcomeasimulationstudy
AT guyattgordon assessmentandimplicationofprognosticimbalanceinrandomizedcontrolledtrialswithabinaryoutcomeasimulationstudy
AT devereauxpj assessmentandimplicationofprognosticimbalanceinrandomizedcontrolledtrialswithabinaryoutcomeasimulationstudy
AT walshmichael assessmentandimplicationofprognosticimbalanceinrandomizedcontrolledtrialswithabinaryoutcomeasimulationstudy
AT thorlundkristian assessmentandimplicationofprognosticimbalanceinrandomizedcontrolledtrialswithabinaryoutcomeasimulationstudy
AT thabanelehana assessmentandimplicationofprognosticimbalanceinrandomizedcontrolledtrialswithabinaryoutcomeasimulationstudy