» Articles » PMID: 35322520

A Two-stage Adaptive Clinical Trial Design with Data-driven Subgroup Identification at Interim Analysis

Overview
Journal Pharm Stat
Publisher Wiley
Date 2022 Mar 24
PMID 35322520
Authors
Affiliations
Soon will be listed here.
Abstract

In this paper, we consider randomized controlled clinical trials comparing two treatments in efficacy assessment using a time to event outcome. We assume a relatively small number of candidate biomarkers available in the beginning of the trial, which may help define an efficacy subgroup which shows differential treatment effect. The efficacy subgroup is to be defined by one or two biomarkers and cut-offs that are unknown to the investigator and must be learned from the data. We propose a two-stage adaptive design with a pre-planned interim analysis and a final analysis. At the interim, several subgroup-finding algorithms are evaluated to search for a subgroup with enhanced survival for treated versus placebo. Conditional powers computed based on the subgroup and the overall population are used to make decision at the interim to terminate the study for futility, continue the study as planned, or conduct sample size recalculation for the subgroup or the overall population. At the final analysis, combination tests together with closed testing procedures are used to determine efficacy in the subgroup or the overall population. We conducted simulation studies to compare our proposed procedures with several subgroup-identification methods in terms of a novel utility function and several other measures. This research demonstrated the benefit of incorporating data-driven subgroup selection into adaptive clinical trial designs.

Citing Articles

Use of Seamless Study Designs in Oncology Clinical Development- A Survey Conducted by IDSWG Oncology Sub-team.

Dong Y, Paux G, Broglio K, Cooner F, Gao G, He W Ther Innov Regul Sci. 2024; 58(5):978-986.

PMID: 38909174 DOI: 10.1007/s43441-024-00676-9.


IBIS: identify biomarker-based subgroups with a Bayesian enrichment design for targeted combination therapy.

Chen X, Zhang J, Jiang L, Yan F BMC Med Res Methodol. 2023; 23(1):66.

PMID: 36941537 PMC: 10026491. DOI: 10.1186/s12874-023-01877-w.

References
1.
Lipkovich I, Dmitrienko A, Denne J, Enas G . Subgroup identification based on differential effect search--a recursive partitioning method for establishing response to treatment in patient subpopulations. Stat Med. 2011; 30(21):2601-21. DOI: 10.1002/sim.4289. View

2.
Xu Y, Constantine F, Yuan Y, Pritchett Y . ASIED: a Bayesian adaptive subgroup-identification enrichment design. J Biopharm Stat. 2019; 30(4):623-638. DOI: 10.1080/10543406.2019.1696356. View

3.
Simon N, Simon R . Using Bayesian modeling in frequentist adaptive enrichment designs. Biostatistics. 2017; 19(1):27-41. PMC: 6075009. DOI: 10.1093/biostatistics/kxw054. View

4.
Lipkovich I, Dmitrienko A, DAgostino Sr R . Tutorial in biostatistics: data-driven subgroup identification and analysis in clinical trials. Stat Med. 2016; 36(1):136-196. DOI: 10.1002/sim.7064. View

5.
Freidlin B, Simon R . Adaptive signature design: an adaptive clinical trial design for generating and prospectively testing a gene expression signature for sensitive patients. Clin Cancer Res. 2005; 11(21):7872-8. DOI: 10.1158/1078-0432.CCR-05-0605. View