CPT: Pharmacometrics & Systems Pharmacology (Nov 2023)

Model‐based meta‐analysis of non‐small cell lung cancer with standard of care PD‐1 inhibitors and chemotherapy for early development decision making

  • David C. Turner,
  • Russ Wada,
  • Helen Zhou,
  • Xiaowei Wang,
  • Rik deGreef,
  • Chandni Valiathan,
  • Lindsey Zhang,
  • Nancy Zhang,
  • Mita Kuchimanchi,
  • Tai‐Tsang Chen,
  • Marc Ballas,
  • Sandra A. G. Visser

DOI
https://doi.org/10.1002/psp4.12917
Journal volume & issue
Vol. 12, no. 11
pp. 1751 – 1763

Abstract

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Abstract Single‐arm cohorts/trials are often used in early phase oncology programs to support preliminary clinical activity assessments for investigational products, administered alone or in combination with standard of care (SOC) agents. Benchmarking clinical activity of those combinations against other treatments, including SOC, requires indirect comparisons against external trials, which presents challenges including cross‐study differences in trial populations/other factors. To facilitate such nonrandomized comparisons, we developed a comprehensive model‐based meta‐analysis (MBMA) framework to quantitatively adjust for factors related to efficacy in metastatic non‐small cell lung cancer (mNSCLC). Data were derived from 15 published studies assessing key programmed cell death protein‐1 (PD‐1) inhibitors pembrolizumab (n = 8) and nivolumab (n = 7), representing current SOC in mNSCLC. In the first stage, a mixed‐effects logistic regression model for overall response rate (ORR) was developed accounting for effects of various population covariates on ORR. The ORR model results indicated an odds ratio (OR) of 1.02 for squamous versus non‐squamous histology and OR of 1.20 for PD‐ligand 1 tumor proportion score (TPS) per every 10% increase of TPS level. Next, a nonparametric mixed‐effects model for overall survival (OS) was developed with ORR/other clinical covariates as input. Subsequently, MBMA simulations of relevant hypothetical scenarios involving single‐arm trial design predicted OS hazard ratios as a function of ORR with matched patient characteristics. Findings from this MBMA and derived parameter estimates can be generally applied by the reader as a framework for interpreting efficacy data from early phase trials to support ORR‐based go/no‐go decisions and futility rules, illustrated through examples in this report.