Literature DB >> 26689167

A predictive enrichment procedure to identify potential responders to a new therapy for randomized, comparative controlled clinical studies.

Junlong Li1, Lihui Zhao2, Lu Tian3, Tianxi Cai1, Brian Claggett4, Andrea Callegaro5, Benjamin Dizier5, Bart Spiessens5, Fernando Ulloa-Montoya5, Lee-Jen Wei6.   

Abstract

To evaluate a new therapy versus a control via a randomized, comparative clinical study or a series of trials, due to heterogeneity of the study patient population, a pre-specified, predictive enrichment procedure may be implemented to identify an "enrichable" subpopulation. For patients in this subpopulation, the therapy is expected to have a desirable overall risk-benefit profile. To develop and validate such a "therapy-diagnostic co-development" strategy, a three-step procedure may be conducted with three independent data sets from a series of similar studies or a single trial. At the first stage, we create various candidate scoring systems based on the baseline information of the patients via, for example, parametric models using the first data set. Each individual score reflects an anticipated average treatment difference for future patients who share similar baseline profiles. A large score indicates that these patients tend to benefit from the new therapy. At the second step, a potentially promising, enrichable subgroup is identified using the totality of evidence from these scoring systems. At the final stage, we validate such a selection via two-sample inference procedures for assessing the treatment effectiveness statistically and clinically with the third data set, the so-called holdout sample. When the study size is not large, one may combine the first two steps using a "cross-training-evaluation" process. Comprehensive numerical studies are conducted to investigate the operational characteristics of the proposed method. The entire enrichment procedure is illustrated with the data from a cardiovascular trial to evaluate a beta-blocker versus a placebo for treating chronic heart failure patients.
© 2015, The International Biometric Society.

Entities:  

Keywords:  Cox model; Cross-validation; Stratified medicine; Survival analysis; Therapy-diagnostic co-development

Mesh:

Substances:

Year:  2015        PMID: 26689167      PMCID: PMC4916037          DOI: 10.1111/biom.12461

Source DB:  PubMed          Journal:  Biometrics        ISSN: 0006-341X            Impact factor:   2.571


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