2015
DOI: 10.1634/theoncologist.2015-0322
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Bringing Model-Based Prediction to Oncology Clinical Practice: A Review of Pharmacometrics Principles and Applications

Abstract: Despite much investment and progress, oncology is still an area with significant unmet medical needs, with new therapies and more effective use of current therapies needed. The emergent field of pharmacometrics combines principles from pharmacology (pharmacokinetics [PK] and pharmacodynamics [PD]), statistics, and computational modeling to support drug development and optimize the use of already marketed drugs. Although it has gained a role within drug development, its use in clinical practice remains scarce.… Show more

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Cited by 38 publications
(31 citation statements)
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“…This may reflect the increased availability of targeted therapies, such as tyrosine kinase inhibitors, that can be administered on a continuous dosing schedule and/or for a longer duration than traditional cytotoxic therapies, thus prompting an increased focus on long‐term tolerability in the overall benefit:risk assessment. In particular, there has been a greater emphasis on understanding sources of pharmacokinetic (PK) variability and characterizing exposure‐response relationships to ensure optimal dose selection …”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…This may reflect the increased availability of targeted therapies, such as tyrosine kinase inhibitors, that can be administered on a continuous dosing schedule and/or for a longer duration than traditional cytotoxic therapies, thus prompting an increased focus on long‐term tolerability in the overall benefit:risk assessment. In particular, there has been a greater emphasis on understanding sources of pharmacokinetic (PK) variability and characterizing exposure‐response relationships to ensure optimal dose selection …”
Section: Introductionmentioning
confidence: 99%
“…In particular, there has been a greater emphasis on understanding sources of pharmacokinetic (PK) variability and characterizing exposure-response relationships to ensure optimal dose selection. 7,[18][19][20] We conducted a comprehensive analysis of publicly available documents that summarize clinical pharmacology studies/analyses included in initial NDA/BLA submissions of oncology new molecular entities (NMEs) approved by the FDA during the January 2011 to April 2017 timeframe. The main purpose of this translational research was to distill knowledge from a clinical pharmacology perspective from the FDA reviews of oncology drugs that can be valuable for clinical development of future oncology drugs.…”
Section: Introductionmentioning
confidence: 99%
“…Modeling in support of preclinical and clinical drug development in oncology has traditionally been focused on the optimization of dose and scheduling using semiempirical, semimechanistic models primarily focused on the characterization of tumor‐size dynamics as an end point . Part of the challenge in achieving successful QSP modeling applications in oncology is the weak preclinical‐to‐clinical translatability—or direct scalability—of experimental data, from mouse (the typical preclinical study system of choice for efficacy) to human in particular.…”
Section: Case Study 3: Qsp Modeling Deepened Mechanistic Understandinmentioning
confidence: 99%
“…Modeling in support of preclinical and clinical drug development in oncology has traditionally been focused on the optimization of dose and scheduling using semiempirical, semimechanistic models primarily focused on the characterization of tumor-size dynamics as an end point. [69][70][71] Part of the challenge in achieving successful QSP modeling applications in oncology is the weak preclinical-to-clinical translatability-or direct scalability-of experimental data, from mouse (the typical preclinical study system of choice for efficacy) to human in particular. This creates a systematic knowledge gap between the detailed mechanistic understanding around an oncology target in a rodent experimental model and its alignment within the proper pathophysiological context in a human cancer indication of interest.…”
Section: Case Study 3: Qsp Modeling Deepened Mechanistic Understandinmentioning
confidence: 99%
“…2 To rationalize the treatment personalization and address treatment failure, the use of modeling and simulation, which can quantitatively characterize and predict the relationships between drug exposure/pharmacokinetics (PK), drug effects/pharmacodynamics (PD), and disease progression, is widely accepted to support drug decision making. [3][4][5][6] Mathematical models that characterize the effects of anticancer drug treatment for solid tumors based on tumor size dynamics, which is typically quantified with measurements of tumor diameter and volume, represent one key class of models applied in cancer pharmacology. Various tumor growth modeling strategies have been previously reviewed, including agent-based models, 7 image-based models, 8 multiscale models, 9 and PK/PD models.…”
mentioning
confidence: 99%