Leveraging external control data in the design and analysis of neuro-oncology trials: Pearls and perils

Author:

Polley Mei-Yin C12ORCID,Schwartz Daniel3,Karrison Theodore12,Dignam James J12

Affiliation:

1. Department of Public Health Sciences, University of Chicago , Chicago, Illinois , USA

2. NRG Oncology Statistics and Data Management Center , Philadelphia, Pennsylvania , USA

3. Department of Data Science, Dana-Farber Cancer Institute , Boston, Massachusetts , USA

Abstract

Abstract Background Randomized controlled trials have been the gold standard for evaluating medical treatments for many decades but they are often criticized for requiring large sample sizes. Given the urgent need for better therapies for glioblastoma, it has been argued that data collected from patients treated with the standard regimen can provide high-quality external control data to supplement or replace concurrent control arm in future glioblastoma trials. Methods In this article, we provide an in-depth appraisal of the use of external control data in the context of neuro-oncology trials. We describe several clinical trial designs with particular attention to how external information is utilized and address common fallacies that may lead to inappropriate adoptions of external control data. Results Using 2 completed glioblastoma trials, we illustrate the use of an assessment tool that lays out a blueprint for assembling a high-quality external control data set. Using statistical simulations, we draw caution from scenarios where these approaches can fall short on controlling the type I error rate. Conclusions While this approach may hold promise in generating informative data in certain settings, this sense of optimism should be tampered with a healthy dose of skepticism due to a myriad of design and analysis challenges articulated in this review. Importantly, careful planning is key to its successful implementation.

Funder

National Cancer Institute

NIH

Publisher

Oxford University Press (OUP)

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