Sample Size Considerations in Precision Medicine

Friday, April 16, 2021 - 11:00am to 11:55am

Event Calendar Category

SDSC

Speaker Name

Eric Laber

Affiliation

Duke University

Zoom meeting id

970 2772 0716

Join Zoom meeting

https://mit.zoom.us/j/97027720716

Abstract

Sequential Multiple Assignment Randomized Trials (SMARTs) are considered the gold standard for estimation and evaluation of treatment regimes. SMARTs are typically sized to ensure sufficient power for a simple comparison, e.g., the comparison of two fixed treatment sequences. Estimation of an optimal treatment regime is conducted as part of a secondary and hypothesis-generating analysis with formal evaluation of the estimated optimal regime deferred to a follow-up trial. However, running a follow-up trial to evaluate an estimated optimal treatment regime is costly and time-consuming; furthermore, the estimated optimal regime that is to be evaluated in such a follow-up trial may be far from optimal if the original trial was underpowered for estimation of an optimal regime. We derive sample size procedures for a SMART that ensure: (i) sufficient power for comparing the optimal treatment regime with standard of care; and (ii) the estimated optimal regime is within a given tolerance of the true optimal regime with high-probability. We establish asymptotic validity of the proposed procedures and demonstrate their finite sample performance in a series of simulation experiments.

 

Biography

Eric Laber is a Professor of Statistical Science and Biostatistics and Bioinformatics at Duke University. His research focuses on data-driven decision-making in health, defense, intelligence, and retail.  He is also passionate about K-12 data science outreach (more information is available at laber-labs.com).