Ivers et al. (2012) have recently stressed the importance to both statistical power and face validity of balancing allocations to study arms on relevant covariates. While several techniques exist (e.g., minimization, pair-matching, stratification), the covariateconstrained randomization (CCR) approach proposed by Moulton (2004) is favored when clusters can be recruited prior to randomization. CCRA V1.0, a macro published by Chaudhary and Moulton (2006), provides a SAS implementation of CCR for a particular subset of possible designs (those with two arms, small numbers of strata and clusters, an equal number of clusters within each stratum, and constraints that can be expressed as absolute mean differences between arms). This paper presents ...
Abstract Background Cluster randomization design is increasingly used for the evaluation of health-c...
The inefficiency induced by between-cluster variation in cluster randomized (CR) trials can be reduc...
This article introduces the method of balanced sampling and explains how to apply it to the selecti...
There are sometimes cost, scientific, or logistical reasons to allocate individuals unequally in an ...
Abstract Background Within cluster randomized trials no algorithms exist to generate a full enumerat...
There are sometimes cost, scientific, or logistical reasons to allocate individuals unequally in an ...
Abstract Reviews have repeatedly noted important methodological issues in the conduct ...
This paper explores the role of balancing covariates between treatment groups in the design of clust...
In this article, we review and evaluate a number of methods used in the design and analysis of small...
Pocock and Simon's minimization method is a very popular covariate-adaptive randomization procedure ...
Thesis (Master's)--University of Washington, 2020In this study, we conducted simulations to evaluate...
Background: Cluster randomized trials (CRTs) are useful in practice-based research network transla-t...
BACKGROUND: Cluster randomised trials often randomise a small number of units, putting them at risk ...
BACKGROUND: Cluster randomization design is increasingly used for the evaluation of health-care, scr...
Covariate-based constrained randomization of group-randomized trials Lawrence H Moultona Group-rando...
Abstract Background Cluster randomization design is increasingly used for the evaluation of health-c...
The inefficiency induced by between-cluster variation in cluster randomized (CR) trials can be reduc...
This article introduces the method of balanced sampling and explains how to apply it to the selecti...
There are sometimes cost, scientific, or logistical reasons to allocate individuals unequally in an ...
Abstract Background Within cluster randomized trials no algorithms exist to generate a full enumerat...
There are sometimes cost, scientific, or logistical reasons to allocate individuals unequally in an ...
Abstract Reviews have repeatedly noted important methodological issues in the conduct ...
This paper explores the role of balancing covariates between treatment groups in the design of clust...
In this article, we review and evaluate a number of methods used in the design and analysis of small...
Pocock and Simon's minimization method is a very popular covariate-adaptive randomization procedure ...
Thesis (Master's)--University of Washington, 2020In this study, we conducted simulations to evaluate...
Background: Cluster randomized trials (CRTs) are useful in practice-based research network transla-t...
BACKGROUND: Cluster randomised trials often randomise a small number of units, putting them at risk ...
BACKGROUND: Cluster randomization design is increasingly used for the evaluation of health-care, scr...
Covariate-based constrained randomization of group-randomized trials Lawrence H Moultona Group-rando...
Abstract Background Cluster randomization design is increasingly used for the evaluation of health-c...
The inefficiency induced by between-cluster variation in cluster randomized (CR) trials can be reduc...
This article introduces the method of balanced sampling and explains how to apply it to the selecti...