AN OMNIBUS TEST FOR DETECTION OF SUBGROUP TREATMENT EFFECTS VIA DATA PARTITIONING

  • Yifei Sun
  • , Xuming He
  • , Jianhua Hu

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

Late-stage clinical trials have been conducted primarily to establish the efficacy of a new treatment in an intended population. A corollary of population heterogeneity in clinical trials is that a treatment might be effective for one or more subgroups, rather than for the whole population of interest. As an example, the phase III clinical trial of panitumumab in metastatic colorec-tal cancer patients failed to demonstrate its efficacy in the overall population, but a subgroup associated with tumor KRAS status was found to be promis-ing (Peeters et al. (Am. J. Clin. Oncol. 28 (2010) 4706–4713)). As we search for such subgroups via data partitioning based on a large number of biomark-ers, we need to guard against inflated type I error rates due to multiple testing. Commonly-used multiplicity adjustments tend to lose power for the detection of subgroup treatment effects. We develop an effective omnibus test to detect the existence of, at least, one subgroup treatment effect, allowing a large number of possible subgroups to be considered and possibly censored outcomes. Applied to the panitumumab trial data, the proposed test would confirm a significant subgroup treatment effect. Empirical studies also show that the proposed test is applicable to a variety of outcome variables and maintains robust statistical power.

Original languageEnglish
Pages (from-to)2266-2278
Number of pages13
JournalAnnals of Applied Statistics
Volume16
Issue number4
DOIs
StatePublished - Dec 2022

Keywords

  • Bootstrap
  • clinical trials
  • data partitioning
  • high-dimensional covariates
  • subgroup treatment effect

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