학술논문

Applied physiologically‐based pharmacokinetic modeling to assess uridine diphosphate‐glucuronosyltransferase‐mediated drug–drug interactions for Vericiguat
Document Type
Report
Source
CPT: Pharmacometrics & Systems Pharmacology. January 2024, Vol. 13 Issue 1, p79, 14 p.
Subject
United States
Germany
Language
English
Abstract
Study Highlights WHAT IS THE CURRENT KNOWLEDGE ON THE TOPIC? CYP‐mediated drug–drug interactions (DDIs) are frequently assessed via in silico physiologically‐based pharmacokinetic (PBPK) studies instead of dedicated clinical studies. However, [...]
: Vericiguat (Verquvo; US: Merck, other countries: Bayer) is a novel drug for the treatment of chronic heart failure. Preclinical studies have demonstrated that the primary route of metabolism for vericiguat is glucuronidation, mainly catalyzed by uridine diphosphate‐glucuronosyltransferase (UGT)1A9 and to a lesser extent UGT1A1. Whereas a drug–drug interaction (DDI) study of the UGT1A9 inhibitor mefenamic acid showed a 20% exposure increase, the effect of UGT1A1 inhibitors has not been assessed clinically. This modeling study describes a physiologically‐based pharmacokinetic (PBPK) approach to complement the clinical DDI liability assessment and support prescription labeling. A PBPK model of vericiguat was developed based on in vitro and clinical data, verified against data from the mefenamic acid DDI study, and applied to assess the UGT1A1 DDI liability by running an in silico DDI study with the UGT1A1 inhibitor atazanavir. A minor effect with an area under the plasma concentration‐time curve (AUC) ratio of 1.12 and a peak plasma concentration ratio of 1.04 was predicted, which indicates that there is no clinically relevant DDI interaction anticipated. Additionally, the effect of potential genetic polymorphisms of UGT1A1 and UGT1A9 was evaluated, which showed that an average modest increase of up to 1.7‐fold in AUC may be expected in the case of concomitantly reduced UGT1A1 and UGT1A9 activity for subpopulations expressing non‐wild‐type variants for both isoforms. This study is a first cornerstone to qualify the PK‐Sim platform for use of UGT‐mediated DDI predictions, including PBPK models of perpetrators, such as mefenamic acid and atazanavir, and sensitive UGT substrates, such as dapagliflozin and raltegravir.