Literature DB >> 27306546

Optimal Design for Informative Protocols in Xenograft Tumor Growth Inhibition Experiments in Mice.

Giulia Lestini1,2,3, France Mentré4,5, Paolo Magni6.   

Abstract

Tumor growth inhibition (TGI) models are increasingly used during preclinical drug development in oncology for the in vivo evaluation of antitumor effect. Tumor sizes are measured in xenografted mice, often only during and shortly after treatment, thus preventing correct identification of some TGI model parameters. Our aims were (i) to evaluate the importance of including measurements during tumor regrowth and (ii) to investigate the proportions of mice included in each arm. For these purposes, optimal design theory based on the Fisher information matrix implemented in PFIM4.0 was applied. Published xenograft experiments, involving different drugs, schedules, and cell lines, were used to help optimize experimental settings and parameters using the Simeoni TGI model. For each experiment, a two-arm design, i.e., control versus treatment, was optimized with or without the constraint of not sampling during tumor regrowth, i.e., "short" and "long" studies, respectively. In long studies, measurements could be taken up to 6 g of tumor weight, whereas in short studies the experiment was stopped 3 days after the end of treatment. Predicted relative standard errors were smaller in long studies than in corresponding short studies. Some optimal measurement times were located in the regrowth phase, highlighting the importance of continuing the experiment after the end of treatment. In the four-arm designs, the results showed that the proportions of control and treated mice can differ. To conclude, making measurements during tumor regrowth should become a general rule for informative preclinical studies in oncology, especially when a delayed drug effect is suspected.

Entities:  

Keywords:  Fisher information matrix; oncology; optimal design; pharmacodynamic; tumor growth inhibition models

Mesh:

Substances:

Year:  2016        PMID: 27306546      PMCID: PMC5660732          DOI: 10.1208/s12248-016-9924-z

Source DB:  PubMed          Journal:  AAPS J        ISSN: 1550-7416            Impact factor:   4.009


  26 in total

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Authors:  M K al-Banna; A W Kelman; B Whiting
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3.  Design evaluation and optimisation in multiple response nonlinear mixed effect models: PFIM 3.0.

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4.  Comparison of ED, EID, and API criteria for the robust optimization of sampling times in pharmacokinetics.

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Journal:  J Pharmacokinet Biopharm       Date:  1997-08

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Journal:  Pharm Res       Date:  2015-06-30       Impact factor: 4.200

6.  A generalisation of T-optimality for discriminating between competing models with an application to pharmacokinetic studies.

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Journal:  Pharm Stat       Date:  2012-10-12       Impact factor: 1.894

7.  Predictive pharmacokinetic-pharmacodynamic modeling of tumor growth kinetics in xenograft models after administration of anticancer agents.

Authors:  Monica Simeoni; Paolo Magni; Cristiano Cammia; Giuseppe De Nicolao; Valter Croci; Enrico Pesenti; Massimiliano Germani; Italo Poggesi; Maurizio Rocchetti
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8.  A mathematical model to study the effects of drugs administration on tumor growth dynamics.

Authors:  P Magni; M Simeoni; I Poggesi; M Rocchetti; G De Nicolao
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Review 9.  Of mice and men: values and liabilities of the athymic nude mouse model in anticancer drug development.

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Journal:  Eur J Cancer       Date:  2004-04       Impact factor: 9.162

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