cvcrand: A Package for Covariate-constrained Randomization and the Clustered Permutation Test for Cluster Randomized Trials

Abstract:

The cluster randomized trial (CRT) is a randomized controlled trial in which randomization is conducted at the cluster level (e.g., school or hospital) and outcomes are measured for each individual within a cluster. Often, the number of clusters available to randomize is small (≤ 20), which increases the chance of baseline covariate imbalance between comparison arms. Such imbalance is particularly problematic when the covariates are predictive of the outcome because it can threaten the internal validity of the CRT. Pair-matching and stratification are two restricted randomization approaches that are frequently used to ensure balance at the design stage. An alternative, less commonly-used restricted randomization approach is covariate-constrained randomization. Covariate-constrained randomization quantifies baseline imbalance of cluster-level covariates using a balance metric and randomly selects a randomization scheme from those with acceptable balance by the balance metric. It is able to accommodate multiple covariates, both categorical and continuous. To facilitate imple mentation of covariate-constrained randomization for the design of two-arm parallel CRTs, we have developed the cvcrand R package. In addition, cvcrand also implements the clustered permutation test for analyzing continuous and binary outcomes collected from a CRT designed with covariate constrained randomization. We used a real cluster randomized trial to illustrate the functions included in the package.

Cite PDF Tweet

Published

Aug. 16, 2019

Received

May 1, 2018

DOI

10.32614/RJ-2019-027

Volume

Pages

11/2

191 - 204

Supplementary materials

Supplementary materials are available in addition to this article. It can be downloaded at RJ-2019-027.zip

CRAN packages used

cvcrand

CRAN Task Views implied by cited packages

Footnotes

    Reuse

    Text and figures are licensed under Creative Commons Attribution CC BY 4.0. The figures that have been reused from other sources don't fall under this license and can be recognized by a note in their caption: "Figure from ...".

    Citation

    For attribution, please cite this work as

    Yu, et al., "The R Journal: cvcrand: A Package for Covariate-constrained Randomization and the Clustered Permutation Test for Cluster Randomized Trials", The R Journal, 2019

    BibTeX citation

    @article{RJ-2019-027,
      author = {Yu, Hengshi and Li, Fan and Gallis, John A. and Turner, Elizabeth L.},
      title = {The R Journal: cvcrand: A Package for Covariate-constrained Randomization and the Clustered Permutation Test for Cluster Randomized Trials},
      journal = {The R Journal},
      year = {2019},
      note = {https://doi.org/10.32614/RJ-2019-027},
      doi = {10.32614/RJ-2019-027},
      volume = {11},
      issue = {2},
      issn = {2073-4859},
      pages = {191-204}
    }