A multistate modeling and simulation framework to learn dose–response of oncology drugs: Application to bintrafusp alfa in non‐small cell lung cancer

Author:

Liu Han1ORCID,Milenković‐Grišić Ana‐Marija2ORCID,Krishnan Sreenath M.1ORCID,Jönsson Siv1ORCID,Friberg Lena E.1ORCID,Girard Pascal3,Venkatakrishnan Karthik4,Vugmeyster Yulia4,Khandelwal Akash2ORCID,Karlsson Mats O.1ORCID

Affiliation:

1. Department of Pharmacy Uppsala University Uppsala Sweden

2. Merck Healthcare KGaA Darmstadt Germany

3. Merck Institute of Pharmacometrics, an affiliate of Merck KGaA Lausanne Switzerland

4. EMD Serono Research & Development Institute, Inc., an affiliate of Merck KGaA Billerica Massachusetts USA

Abstract

AbstractThe dose/exposure‐efficacy analyses are often conducted separately for oncology end points like best overall response, progression‐free survival (PFS) and overall survival (OS). Multistate models offer to bridge these dose‐end point relationships by describing transitions and transition times from enrollment to response, progression, and death, and evaluating transition‐specific dose effects. This study aims to apply the multistate pharmacometric modeling and simulation framework in a dose optimization setting of bintrafusp alfa, a fusion protein targeting TGF‐β and PD‐L1. A multistate model with six states (stable disease [SD], response, progression, unknown, dropout, and death) was developed to describe the totality of endpoints data (time to response, PFS, and OS) of 80 patients with non‐small cell lung cancer receiving 500 or 1200 mg of bintrafusp alfa. Besides dose, evaluated predictor of transitions include time, demographics, premedication, disease factors, individual clearance derived from a pharmacokinetic model, and tumor dynamic metrics observed or derived from tumor size model. We found that probabilities of progression and death upon progression decreased over time since enrollment. Patients with metastasis at baseline had a higher probability to progress than patients without metastasis had. Despite dose failed to be statistically significant for any individual transition, the combined effect quantified through a model with dose‐specific transition estimates was still informative. Simulations predicted a 69.2% probability of at least 1 month longer, and, 55.6% probability of at least 2‐months longer median OS from the 1200 mg compared to the 500 mg dose, supporting the selection of 1200 mg for future studies.

Funder

Merck KGaA

Cancerfonden

Publisher

Wiley

Subject

Pharmacology (medical),Modeling and Simulation

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