Using pilot data to size a two-arm randomized trial to find a nearly optimal personalized treatment strategy

Statistics in medicine, 35(8), 1245-1256

DOI 10.1002/sim.6783 PMID 26506890 Source

Abstract

A personalized treatment strategy formalizes evidence-based treatment selection by mapping patient information to a recommended treatment. Personalized treatment strategies can produce better patient outcomes while reducing cost and treatment burden. Thus, among clinical and intervention scientists, there is a growing interest in conducting randomized clinical trials when one of the primary aims is estimation of a personalized treatment strategy. However, at present, there are no appropriate sample size formulae to assist in the design of such a trial. Furthermore, because the sampling distribution of the estimated outcome under an estimated optimal treatment strategy can be highly sensitive to small perturbations in the underlying generative model, sample size calculations based on standard (uncorrected) asymptotic approximations or computer simulations may not be reliable. We offer a simple and robust method for powering a single stage, two-armed randomized clinical trial when the primary aim is estimating the optimal single stage personalized treatment strategy. The proposed method is based on inverting a plugin projection confidence interval and is thereby regular and robust to small perturbations of the underlying generative model. The proposed method requires elicitation of two clinically meaningful parameters from clinical scientists and uses data from a small pilot study to estimate nuisance parameters, which are not easily elicited. The method performs well in simulated experiments and is illustrated using data from a pilot study of time to conception and fertility awareness.

Topics

fertility awareness research methods, personalized treatment trial design, sample size calculation fertility studies, time to conception pilot study, randomized trial personalized medicine, fertility awareness statistical methods, treatment strategy optimization fertility, clinical trial design fertility awareness, powering fertility studies, adaptive treatment fertility, evidence-based fertility treatment selection

Cite this article

Laber, E. B., Zhao, Y. Q., Regh, T., Davidian, M., Tsiatis, A., Zeng, D., Song, R., Kosorok, M. R., & Stanford, J. B. (2015). Using pilot data to size a two-arm randomized trial to find a nearly optimal personalized treatment strategy. *Statistics in medicine*, *35*(8), 1245-1256. https://doi.org/10.1002/sim.6783

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