PURPOSE: Pharmacokinetic/pharmacodynamic (PK/PD) models have been shown to be useful in predicting tumor growth rates in mouse xenografts. We applied novel PK/PD models to the published anticancer combination therapies of tumor growth inhibition to simulate synergistic changes in tumor growth rates. The parameters from the PK/PD model were further used to estimate clinical doses of the combination. METHODS: A PK/PD model was built that linked the dosing regimen of a compound to the inhibition of tumor growth in mouse xenograft models. Two subsequent PK/PD models were developed to simulate the published tumor growth profiles of combination treatments. Model I predicts the tumor growth curve assuming that the effect of two anticancer drugs, AZD7762 and irinotecan, is synergistic when given in combination. Model II predicts the tumor growth curve assuming that the effect of co-administering flavopiridol and irinotecan is maximally synergistic when dosed at an optimal interval. RESULTS: Model I was able to account for the synergistic effects of AZD7762 following the administration of irinotecan. When Model II was applied to the antitumor activity of irinotecan and flavopiridol combination therapy, the modeling was able to reproduce the optimal dosing interval between administrations of the compounds. Furthermore, Model II was able to estimate the biologically active dose of flavopiridol recommended for phase II studies. CONCLUSIONS: The timing of clinical combination therapy doses is often selected empirically. PK/PD models provide a theoretical structure useful in the design of the optimal clinical dose, frequency of administration and the optimal timing of administration between anticancer agents to maximize tumor suppression.
PURPOSE: Pharmacokinetic/pharmacodynamic (PK/PD) models have been shown to be useful in predicting tumor growth rates in mouse xenografts. We applied novel PK/PD models to the published anticancer combination therapies of tumor growth inhibition to simulate synergistic changes in tumor growth rates. The parameters from the PK/PD model were further used to estimate clinical doses of the combination. METHODS: A PK/PD model was built that linked the dosing regimen of a compound to the inhibition of tumor growth in mouse xenograft models. Two subsequent PK/PD models were developed to simulate the published tumor growth profiles of combination treatments. Model I predicts the tumor growth curve assuming that the effect of two anticancer drugs, AZD7762 and irinotecan, is synergistic when given in combination. Model II predicts the tumor growth curve assuming that the effect of co-administering flavopiridol and irinotecan is maximally synergistic when dosed at an optimal interval. RESULTS: Model I was able to account for the synergistic effects of AZD7762 following the administration of irinotecan. When Model II was applied to the antitumor activity of irinotecan and flavopiridol combination therapy, the modeling was able to reproduce the optimal dosing interval between administrations of the compounds. Furthermore, Model II was able to estimate the biologically active dose of flavopiridol recommended for phase II studies. CONCLUSIONS: The timing of clinical combination therapy doses is often selected empirically. PK/PD models provide a theoretical structure useful in the design of the optimal clinical dose, frequency of administration and the optimal timing of administration between anticancer agents to maximize tumor suppression.
Authors: James B Mitchell; Rajani Choudhuri; Kristin Fabre; Anastasia L Sowers; Deborah Citrin; Sonya D Zabludoff; John A Cook Journal: Clin Cancer Res Date: 2010-03-16 Impact factor: 12.531
Authors: Moses M Darpolor; Peter T Kennealey; H Carl Le; Kristen L Zakian; Ellen Ackerstaff; Asif Rizwan; Jin-Hong Chen; Elliot B Sambol; Gary K Schwartz; Samuel Singer; Jason A Koutcher Journal: NMR Biomed Date: 2011-03-24 Impact factor: 4.044
Authors: Nadia Terranova; Massimiliano Germani; Francesca Del Bene; Paolo Magni Journal: Cancer Chemother Pharmacol Date: 2013-06-29 Impact factor: 3.333
Authors: Tim Cardilin; Joachim Almquist; Mats Jirstrand; Astrid Zimmermann; Floriane Lignet; Samer El Bawab; Johan Gabrielsson Journal: Cancer Chemother Pharmacol Date: 2019-04-11 Impact factor: 3.333