A practical guide to pre-trial simulations using SAS and WinBUGS for Bayesian response-adaptive trial designs

Christian Holm Hansen; P Warner; R Parker; H Critchley; L Whitaker; A Walker; JC Weir; (2018) A practical guide to pre-trial simulations using SAS and WinBUGS for Bayesian response-adaptive trial designs. Pharmaceutical Statistics, 17 (6). pp. 854-865. ISSN 1539-1604 DOI: 10.1002/pst.1897
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It is often unclear what specific adaptive trial design features lead to an efficient design which is also feasible to implement. Before deciding on a particular design, it is generally advisable to carry out a simulation study to characterise the properties of candidate designs under a range of plausible assumptions. The implementation of such pre‐trial simulation studies presents many challenges and requires considerable statistical programming effort and time. Despite the scale and complexity, there is little existing literature to guide the implementation of such projects using commonly available software. This Teacher's Corner article provides a practical step‐by‐step guide to implementing such simulation studies including how to specify and fit a Bayesian model in WinBUGS or OpenBUGS using SAS, and how results from the Bayesian analysis may be pulled back into SAS and used for adaptation of allocation probabilities before simulating subsequent stages of the trial. The interface between the two software platforms is described in detail along with useful tips and tricks. A key strength of our approach is that the entire exercise can be defined and controlled from within a single SAS program.


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