cancel
Showing results for 
Show  only  | Search instead for 
Did you mean: 
Choose Language Hide Translation Bar
Predicting Patient Recruitment in Multicenter Clinical Trials

Xiaotong Jiang, Department of Biostatistics, University of North Carolina at Chapel Hill

Richard C. Zink, PhD, JMP Life Sciences, SAS

 

The initial recruitment timeline for a clinical trial is often determined by enrollment rates of past trials. Despite best efforts, challenges in identifying and recruiting the necessary patients in order to appropriately power the clinical trial may delay study completion. Extended timelines result in increased costs for the ongoing study and delays in downstream activities, which may include additional clinical trials or a potential regulatory submission. An interactive implementation of the Anisimov and Fedorov (2007) algorithm is implemented to predict remaining recruitment time in JMP Clinical. The arrival of patients at each center follows  an independent Poisson process with rate sampled from a gamma distribution with unknown parameters. Given current enrollment information, model parameters are estimated using maximum likelihood, which are then used to predict the remaining recruitment time and confidence intervals through simulation. Further, if there is a high probability of missing the recruitment deadline, the number of additional clinical centers needed to meet the deadline is determined, adaptively adjusting the number of centers until the target time is achieved. This feature is geared to different customer needs via pre-specified options and could possibly be modified to predict recruitment in areas such as business and finance in the future.

Discovery Summit 2016 Resources

Discovery Summit 2016 is over, but it's not too late to participate in the conversation!

Below, you'll find papers, posters and selected video clips from Discovery Summit 2016.