Enrichment designs with a continuous biomarker require the estimation of a threshold to determine the subpopulation benefitting from the treatment. This article provides the optimal allocation for inference in a two-stage enrichment design for treatment comparisons when a continuous biomarker is suspected to affect patient response. Several design criteria, associated with different trial objectives, are optimized under balanced or Neyman allocation and under equality of the first two empirical biomarker’s moments. Moreover, we propose a new covariate-adaptive randomization procedure that converges to the optimum with the fastest available rate. Theoretical and simulation results show that this strategy improves the efficiency of a two-stage enrichment clinical trial, especially with smaller sample sizes and under heterogeneous responses.

Alessandro Baldi Antognini, Rosamarie Frieri, William F. Rosenberger, Maroussa Zagoraiou (2024). Optimal design for inference on the threshold of a biomarker. STATISTICAL METHODS IN MEDICAL RESEARCH, 33(2), 321-343 [10.1177/09622802231225964].

Optimal design for inference on the threshold of a biomarker

Alessandro Baldi Antognini;Rosamarie Frieri;William F. Rosenberger;Maroussa Zagoraiou
2024

Abstract

Enrichment designs with a continuous biomarker require the estimation of a threshold to determine the subpopulation benefitting from the treatment. This article provides the optimal allocation for inference in a two-stage enrichment design for treatment comparisons when a continuous biomarker is suspected to affect patient response. Several design criteria, associated with different trial objectives, are optimized under balanced or Neyman allocation and under equality of the first two empirical biomarker’s moments. Moreover, we propose a new covariate-adaptive randomization procedure that converges to the optimum with the fastest available rate. Theoretical and simulation results show that this strategy improves the efficiency of a two-stage enrichment clinical trial, especially with smaller sample sizes and under heterogeneous responses.
2024
Alessandro Baldi Antognini, Rosamarie Frieri, William F. Rosenberger, Maroussa Zagoraiou (2024). Optimal design for inference on the threshold of a biomarker. STATISTICAL METHODS IN MEDICAL RESEARCH, 33(2), 321-343 [10.1177/09622802231225964].
Alessandro Baldi Antognini; Rosamarie Frieri; William F. Rosenberger; Maroussa Zagoraiou;
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/955777
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