BMC Medical Research Methodology (Dec 2022)

A systematic review of randomisation method use in RCTs and association of trial design characteristics with method selection

  • Cydney L. Bruce,
  • Edmund Juszczak,
  • Reuben Ogollah,
  • Christopher Partlett,
  • Alan Montgomery

DOI
https://doi.org/10.1186/s12874-022-01786-4
Journal volume & issue
Vol. 22, no. 1
pp. 1 – 9

Abstract

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Abstract Background When conducting a randomised controlled trial, there exist many different methods to allocate participants, and a vast array of evidence-based opinions on which methods are the most effective at doing this, leading to differing use of these methods. There is also evidence that study characteristics affect the performance of these methods, but it is unknown whether the study design affects researchers’ decision when choosing a method. Methods We conducted a review of papers published in five journals in 2019 to assess which randomisation methods are most commonly being used, as well as identifying which aspects of study design, if any, are associated with the choice of randomisation method. Randomisation methodology use was compared with a similar review conducted in 2014. Results The most used randomisation method in this review is block stratification used in 162/330 trials. A combination of simple, randomisation, block randomisation, stratification and minimisation make up 318/330 trials, with only a small number of more novel methods being used, although this number has increased marginally since 2014. More complex methods such as stratification and minimisation seem to be used in larger multicentre studies. Conclusions Within this review, most methods used can be classified using a combination of simple, block stratification and minimisation, suggesting that there is not much if any increase in the uptake of newer more novel methods. There seems to be a noticeable polarisation of method use, with an increase in the use of simple methods, but an increase in the complexity of more complex methods, with greater numbers of variables included in the analysis, and a greater number of strata.

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