Model‐based bioequivalence approach for sparse pharmacokinetic bioequivalence studies: Model selection or model averaging?

Author:

Philipp Morgane1ORCID,Tessier Adrien2,Donnelly Mark3,Fang Lanyan3,Feng Kairui3,Zhao Liang3,Grosser Stella4,Sun Guoying4,Sun Wanjie4,Mentré France1,Bertrand Julie1

Affiliation:

1. Université Paris Cité, IAME, INSERM Paris France

2. Clinical Pharmacometrics, Quantitative Pharmacology Servier Suresnes France

3. Division of Quantitative Methods and Modeling, Office of Research and Standards, Office of Generic Drugs, Center for Drug Evaluation and Research U.S. Food and Drug Administration Silver Spring Maryland USA

4. Office of Biostatistics, Office of Translational Sciences, Center for Drug Evaluation and Research U.S. Food and Drug Administration Silver Spring Maryland USA

Abstract

Conventional pharmacokinetic (PK) bioequivalence (BE) studies aim to compare the rate and extent of drug absorption from a test (T) and reference (R) product using non‐compartmental analysis (NCA) and the two one‐sided test (TOST). Recently published regulatory guidance recommends alternative model‐based (MB) approaches for BE assessment when NCA is challenging, as for long‐acting injectables and products which require sparse PK sampling. However, our previous research on MB‐TOST approaches showed that model misspecification can lead to inflated type I error. The objective of this research was to compare the performance of model selection (MS) on R product arm data and model averaging (MA) from a pool of candidate structural PK models in MBBE studies with sparse sampling. Our simulation study was inspired by a real case BE study using a two‐way crossover design. PK data were simulated using three structural models under the null hypothesis and one model under the alternative hypothesis. MB‐TOST was applied either using each of the five candidate models or following MS and MA with or without the simulated model in the pool. Assuming T and R have the same PK model, our simulation shows that following MS and MA, MB‐TOST controls type I error rates at or below 0.05 and attains similar or even higher power than when using the simulated model. Thus, we propose to use MS prior to MB‐TOST for BE studies with sparse PK sampling and to consider MA when candidate models have similar Akaike information criterion.

Funder

U.S. Food and Drug Administration

Publisher

Wiley

Reference24 articles.

1. FDA.Bioequivalence studies with pharmacokinetic endpoints for drugs submitted under an ANDA.https://www.fda.gov/media/87219/download2021

2. A comparison of the Two One-Sided Tests Procedure and the Power Approach for assessing the equivalence of average bioavailability

3. FDA.Guidance for industry‐Statistical approaches to establishing bioequivalence.https://www.fda.gov/media/163638/download2022

4. EMA.Guideline on the investigation of bioequivalence.https://www.ema.europa.eu/en/documents/scientific‐guideline/guideline‐investigation‐bioequivalence‐rev1_en.pdf2010

5. FDA.Guidance for industry‐Bioequivalence: blood level bioequivalence study.https://www.fda.gov/media/89840/download2016

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