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The Comparison of Machine Learning and Mechanistic In Vitro-In Vivo Extrapolation Models for the Prediction of Human Intrinsic Clearance.
Keefer, Christopher E; Chang, George; Di, Li; Woody, Nathaniel A; Tess, David A; Osgood, Sarah M; Kapinos, Brendon; Racich, Jill; Carlo, Anthony A; Balesano, Amanda; Ferguson, Nicholas; Orozco, Christine; Zueva, Larisa; Luo, Lina.
Afiliación
  • Keefer CE; Translational Modeling and Simulation, Pfizer Worldwide Research and Development, Groton, Connecticut 06340, United States.
  • Chang G; Translational Modeling and Simulation, Pfizer Worldwide Research and Development, Groton, Connecticut 06340, United States.
  • Di L; Pharmacokinetics, Dynamics and Metabolism, Pfizer Worldwide Research and Development, Groton, Connecticut 06340, United States.
  • Woody NA; Translational Modeling and Simulation, Pfizer Worldwide Research and Development, Groton, Connecticut 06340, United States.
  • Tess DA; Translational Modeling and Simulation, Pfizer Worldwide Research and Development, Cambridge, Massachusetts 02139, United States.
  • Osgood SM; Pharmacokinetics, Dynamics and Metabolism, Pfizer Worldwide Research and Development, Groton, Connecticut 06340, United States.
  • Kapinos B; Discovery Sciences, Pfizer Worldwide Research and Development, Groton, Connecticut 06340, United States.
  • Racich J; Discovery Sciences, Pfizer Worldwide Research and Development, Groton, Connecticut 06340, United States.
  • Carlo AA; Discovery Sciences, Pfizer Worldwide Research and Development, Groton, Connecticut 06340, United States.
  • Balesano A; Pharmacokinetics, Dynamics and Metabolism, Pfizer Worldwide Research and Development, Groton, Connecticut 06340, United States.
  • Ferguson N; Pharmacokinetics, Dynamics and Metabolism, Pfizer Worldwide Research and Development, Groton, Connecticut 06340, United States.
  • Orozco C; Pharmacokinetics, Dynamics and Metabolism, Pfizer Worldwide Research and Development, Groton, Connecticut 06340, United States.
  • Zueva L; Pharmacokinetics, Dynamics and Metabolism, Pfizer Worldwide Research and Development, Groton, Connecticut 06340, United States.
  • Luo L; Pharmacokinetics, Dynamics and Metabolism, Pfizer Worldwide Research and Development, Groton, Connecticut 06340, United States.
Mol Pharm ; 20(11): 5616-5630, 2023 11 06.
Article en En | MEDLINE | ID: mdl-37812508
ABSTRACT
Accurate prediction of human pharmacokinetics (PK) remains one of the key objectives of drug metabolism and PK (DMPK) scientists in drug discovery projects. This is typically performed by using in vitro-in vivo extrapolation (IVIVE) based on mechanistic PK models. In recent years, machine learning (ML), with its ability to harness patterns from previous outcomes to predict future events, has gained increased popularity in application to absorption, distribution, metabolism, and excretion (ADME) sciences. This study compares the performance of various ML and mechanistic models for the prediction of human IV clearance for a large (645) set of diverse compounds with literature human IV PK data, as well as measured relevant in vitro end points. ML models were built using multiple approaches for the descriptors (1) calculated physical properties and structural descriptors based on chemical structure alone (classical QSAR/QSPR); (2) in vitro measured inputs only with no structure-based descriptors (ML IVIVE); and (3) in silico ML IVIVE using in silico model predictions for the in vitro inputs. For the mechanistic models, well-stirred and parallel-tube liver models were considered with and without the use of empirical scaling factors and with and without renal clearance. The best ML model for the prediction of in vivo human intrinsic clearance (CLint) was an in vitro ML IVIVE model using only six in vitro inputs with an average absolute fold error (AAFE) of 2.5. The best mechanistic model used the parallel-tube liver model, with empirical scaling factors resulting in an AAFE of 2.8. The corresponding mechanistic model with full in silico inputs achieved an AAFE of 3.3. These relative performances of the models were confirmed with the prediction of 16 Pfizer drug candidates that were not part of the original data set. Results show that ML IVIVE models are comparable to or superior to their best mechanistic counterparts. We also show that ML IVIVE models can be used to derive insights into factors for the improvement of mechanistic PK prediction.
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Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Líquidos Corporales Tipo de estudio: Prognostic_studies / Risk_factors_studies Límite: Humans Idioma: En Revista: Mol Pharm Asunto de la revista: BIOLOGIA MOLECULAR / FARMACIA / FARMACOLOGIA Año: 2023 Tipo del documento: Article País de afiliación: Estados Unidos

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Líquidos Corporales Tipo de estudio: Prognostic_studies / Risk_factors_studies Límite: Humans Idioma: En Revista: Mol Pharm Asunto de la revista: BIOLOGIA MOLECULAR / FARMACIA / FARMACOLOGIA Año: 2023 Tipo del documento: Article País de afiliación: Estados Unidos
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