Research Article
Optimal clinical trial design using value of information methods with imperfect implementation
Article first published online: 27 APR 2009
DOI: 10.1002/hec.1493
Copyright © 2009 John Wiley & Sons, Ltd.
Additional Information
How to Cite
Willan, A. R. and Eckermann, S. (2010), Optimal clinical trial design using value of information methods with imperfect implementation. Health Economics, 19: 549–561. doi: 10.1002/hec.1493
Publication History
- Issue published online: 8 APR 2010
- Article first published online: 27 APR 2009
- Manuscript Accepted: 13 MAR 2009
- Manuscript Revised: 19 FEB 2009
- Manuscript Received: 17 APR 2008
- Abstract
- References
- Cited By
Keywords:
- value of information;
- optimal trial design;
- imperfect implementation
Abstract
Traditional sample size calculations for randomized clinical trials are based on the tests of hypotheses and depend on somewhat arbitrarily chosen factors, such as type I and II errors rates and the smallest clinically important difference. In response to this, many authors have proposed the use of methods based on the value of information as an alternative. Previous attempts have assumed perfect implementation, i.e. if current evidence favors the new intervention and no new information is sought or expected, all future patients will receive it. A framework is proposed to allow for this assumption to be relaxed. The profound effect that this can have on the optimal sample size and expected net gain is illustrated on two recent examples. In addition, a model for assessing the value of implementation strategies is proposed and illustrated. Copyright © 2009 John Wiley & Sons, Ltd.

1099-1050/asset/HEC_centre.gif?v=1&s=0185bf508eda50f535786bfd8e22b47c50d0e4db)
1099-1050/asset/cover.gif?v=1&s=af8abe1b1dd6990bc2f6af06e451153b7d74332a)