Evaluating hybrid controls methodology in early‐phase oncology trials: A simulation study based on the MORPHEUS‐UC trial

Author:

Wang Guanbo123,Poulin‐Costello Melanie3ORCID,Pang Herbert4,Zhu Jiawen4ORCID,Helms Hans‐Joachim5,Reyes‐Rivera Irmarie5,Platt Robert W.67,Pang Menglan8,Koukounari Artemis9

Affiliation:

1. CAUSALab Harvard T. H. Chan School of Public Health Boston Massachusetts USA

2. Department of Epidemiology Harvard T. H. Chan School of Public Health Boston Massachusetts USA

3. Product Development Data Sciences F. Hoffmann‐La Roche Ltd Mississauga Ontario Canada

4. Product Development Data Sciences Genentech South San Francisco California USA

5. Product Development Data Sciences F. Hoffmann‐La Roche Ltd Basel Switzerland

6. Department of Epidemiology, Biostatistics and Occupational Health McGill University Montreal Quebec Canada

7. Department of Pediatrics McGill University Montreal Quebec Canada

8. Biostatistics Biogen Cambridge Massachusetts USA

9. Product Development Data Sciences F. Hoffmann‐La Roche Ltd Welwyn Garden City UK

Abstract

AbstractPhase Ib/II oncology trials, despite their small sample sizes, aim to provide information for optimal internal company decision‐making concerning novel drug development. Hybrid controls (a combination of the current control arm and controls from one or more sources of historical trial data [HTD]) can be used to increase statistical precision. Here we assess combining two sources of Roche HTD to construct a hybrid control in targeted therapy for decision‐making via an extensive simulation study. Our simulations are based on the real data of one of the experimental arms and the control arm of the MORPHEUS‐UC Phase Ib/II study and two Roche HTD for atezolizumab monotherapy. We consider potential complications such as model misspecification, unmeasured confounding, different sample sizes of current treatment groups, and heterogeneity among the three trials. We evaluate two frequentist methods (with both Cox and Weibull accelerated failure time [AFT] models) and three different commensurate priors in Bayesian dynamic borrowing (with a Weibull AFT model), and modifications within each of those, when estimating the effect of treatment on survival outcomes and measures of effect such as marginal hazard ratios. We assess the performance of these methods in different settings and the potential of generalizations to supplement decisions in early‐phase oncology trials. The results show that the proposed joint frequentist methods and noninformative priors within Bayesian dynamic borrowing with no adjustment on covariates are preferred, especially when treatment effects across the three trials are heterogeneous. For generalization of hybrid control methods in such settings, we recommend more simulation studies.

Publisher

Wiley

Subject

Pharmacology (medical),Pharmacology,Statistics and Probability

Reference54 articles.

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