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The time course of tumour size changes with gemcitabine. What can we learn about pharmacology?

The time course of tumour size changes with gemcitabine. What can we learn about pharmacology?. Nick Holford Dept Pharmacology & Clinical Pharmacology University of Auckland. The Workers. Lai San Tham 3 Boon-Cher Goh 1 Wei Peng Yong 1 Ross A Soo 1 Ling-Zhi Wang 1 Soo-Chin Lee 1

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The time course of tumour size changes with gemcitabine. What can we learn about pharmacology?

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  1. The time course of tumour sizechanges with gemcitabine.What can we learn about pharmacology? Nick Holford Dept Pharmacology & Clinical Pharmacology University of Auckland

  2. The Workers Lai San Tham3 Boon-Cher Goh1 Wei Peng Yong1 Ross A Soo1 Ling-Zhi Wang1 Soo-Chin Lee1 How-Sung Lee2 1Department of Hematology-Oncology, National University Hospital, Singapore 2Department of Pharmacology, National University of Singapore 3Lilly-NUS Centre for Clinical Pharmacology, Singapore

  3. Outline • What does Pharmacology mean? • Does Cancer need PKPD? • Learning and Confirming • A reminder • Tumor response study • A pharmacodynamic model for the time course of tumor shrinkage in patients with ‘big cell’ lung cancer • What can we learn about pharmacology? • How can we use tumour size to predict survival?

  4. Pharmacokinetics Pharmacodynamics Rx =Recipe or Jupiter Symbol Treatment What does this mean?

  5. Confirming orLearning? Sheiner LB. Learning versus confirming in clinical drug development. Clinical Pharmacology & Therapeutics 1997;61(3):275-91

  6. "Why We're Losing the War on Cancer" Accelerating Anticancer Agent Development and Validation Workshop June 20-22, 2007 Keynote Address: "Learning Too Little, Too Late: Why We Need a New Paradigm for the Cancer Clinical Trial"Clifton LeafFormer Executive EditorFortune

  7. Resisting RECIST Throwing away data?

  8. Collaborative Effort

  9. Singapore Study • Randomized, phase II trial • Carboplatin at AUC of 5mg/mL*min given over one hour on day 1 of each cycle prior to the gemcitabine infusion • Study arms • gemcitabine 750 mg/m2 over 75 minutes (Arm A) on days 1 and 8 every 3 weeks x 6 cycles • gemcitabine 1000 mg/m2 over 30 minutes (Arm B) on days 1 and 8 every 3 weeks x 6 cycles • No differences in outcome (survival or toxicity) Soo RA, Wang LZ, Tham LS, Yong WP, Boyer M, Lim HL, et al. A multicentre randomised phase II study of carboplatin in combination with gemcitabine at standard rate or fixed dose rate infusion in patients with advanced stage non-small-cell lung cancer. Ann Oncol. 2006;17(7):1128-33.

  10. Singapore Study of Tumour Size • 56 treatment naïve patients with advanced ‘big cell’ lung cancer treated with carboplatin and gemcitabine • 261 measurements of tumour size • largest dimension of the primary tumour measured from CT images using electronic calipers • Used only for RECIST category  • Measurements at protocol baseline, cycles 2, 4 and 6, and bimonthly • Actual mean follow up only 3.5 months

  11. Gemcitabine Pharmacology • Gemcitabine (dFdC) • Inactive pro-drug • dFdCTP (gemcitabine triphosphate) • Intracellular, active, tri-phosphate metabolite • dFdU • Major extracellular, inactive metabolite

  12. Exposure Response • Which Exposure Measure? • Dose • Cannot distinguish PK from PD causes of variation • AUC • Can be used to identify causes of between patient variability through PK model linking Dose to AUC • C(t) • Can be used to predict schedule dependence • But long computation times preclude practical exploration of C(t) and response

  13. Why Dose by Dose Concentration Time Course Won’t Work Concentration Spikes With Each Cycle Slow Tumour Response

  14. How to Describe Delayed Drug Response? • Exposure has delayed effect • Time course of drug concentration is complete within a few hours • Binding of drug to DNA probably rapid • Effect of DNA damage on cell proliferation probably slow • Time course of tumour response takes weeks • KPD Effect Compartment Model for Exposure • What “apparent half-life” of drug would explain the effect time course? • Can be based on Dose or AUC • C(t) not required

  15. Drug Effect on Tumour Formation Rate Tumour Turnover Kinetics Simple Feedback Tumour Size Model Semi-mechanistic Natural history of tumour growth has rapid growth with asymptote Feedback inhibits growth Drug effect expresses pathophysiological mechanism

  16. “KPD” Drug Effect and Tumour Turnover • Effect assumed to slow rate of proliferation of new tumour cells Dose Drug Effect Model Tumour Turnover Compartment Effect Compartment KPD Model Tumour Model T1/2,effect describes delay in drug effect Tturnover describes delay in tumour esponse

  17. “KPD” plus Turnover Effective Amount of Drug Tumour Size

  18. Variability inGemcitabine Dose-Response

  19. Why Stop Treatment?

  20. Which Exposure Metric? • No better fit with dFdCTP (or dfdU) compared to gemcitibine AUC • No better fit with individual AUC compared with dose of gemcitabine • Dose is the simplest exposure metric

  21. Tumour Size Turnover and PD Parameters BSV=Between Subject Variability (apparent coefficient of variation) 95%CI=Empirical confidence interval from 1000 bootstraps

  22. What Did We Learn About Pharmacology? • No evidence that differences in exposure time course [C(t)] can influence tumour response • No evidence that intracellular metabolite is better then dose as a predictor of tumour response • Anti-tumour mechanism may be different from haematological toxicities • Unable to learn about influence of dose and duration of infusion • Uninformative design Didn’t learn very much!

  23. What Could We Learn About Pharmacology? • Can quantitate individual sensitivity (ED50) and time course (effect and tumour ‘half-lives’) • Complements toxicity based models e.g. Friberg myelosuppression model (optimal dosing?) • Link to survival probability (Claret et al 2009, Wang et al 2009)

  24. FDA Model Linking Tumour Size with Survival Wang Y, Sung C, Dartois C, Ramchandani R, Booth BP, Rock E, Gobburu J. Elucidation of relationship between tumor size and survival in non-small-cell lung cancer patients can aid early decision making in clinical drug development. Clin Pharmacol Ther. 2009;86(2):167-74.

  25. Wang (FDA) Tumour Size Model “A model with mixed exponential-decay (shrinkage) and linear-growth (progression) components described the time course of tumor change where TSi(t) is the tumor size at time t for the ith individual, BASEi is the baseline tumor size, SRi is the exponential tumor shrinkage rate constant, and PRi is the linear tumor progression rate.” Empirical model No dose or exposure information used

  26. Claret Tumour Size Model Log growth for tumor (no asymptote unlike Gompertz) D(t)*exp(-λ*t) is identical to the effect compartment model R(t) ‘resistance’ function cannot be distinguished from drug elimination

  27. Tumour Size and SurvivalWang/Claret Tumour Size At 8 weeks FDA Advisory Committee for Pharmaceutical Sciences and Clinical Pharmacology Meeting, March 18–19, 2008. http://www.fda.gov/ohrms/dockets/ac/08/briefing/2008-4351b1-01-FDA.pdf

  28. Tumour Size Predictions FDA Advisory Committee for Pharmaceutical Sciences and Clinical Pharmacology Meeting, March 18–19, 2008. http://www.fda.gov/ohrms/dockets/ac/08/briefing/2008-4351b1-01-FDA.pdf

  29. Tumour Size ImprovesPrediction of Survival FDA Advisory Committee for Pharmaceutical Sciences and Clinical Pharmacology Meeting, March 18–19, 2008. http://www.fda.gov/ohrms/dockets/ac/08/briefing/2008-4351b1-01-FDA.pdf

  30. Which Patient Will Survive Longer? Wang et al. and Claret et al. use tumour size at a fixed time to predict survival. These patients have the same 8 week tumour size but different response time course Survival models should include time course of tumour size!

  31. Way to go!

  32. Backup

  33. Commentary Clinical Pharmacology and Therapeutics “Drug-independent models that link biomarker response to clinical end points are critical to support early (end of phase II) clinical decisions. In oncology, change in tumor size (a biomarker of drug effect evaluated in phase II) is linked to survival (a phase II end point) in some solid tumors. Change in tumor size can be used as a primary end point in the design and evaluation of phase II studies and in supporting go/no-go decisions and phase II study design.” Bruno R, Claret L. On the use of change in tumor size to predict survival in clinical oncology studies: toward a new paradigm to design and evaluate phase II studies. Clin Pharmacol Ther. 2009;86(2):136-8.

  34. FDA Conclusions FDA Advisory Committee for Pharmaceutical Sciences and Clinical Pharmacology Meeting, March 18–19, 2008. http://www.fda.gov/ohrms/dockets/ac/08/briefing/2008-4351b1-01-FDA.pdf

  35. Clinical Response Table 2. Summary of clinical response Conclusion – no significant difference between treatments

  36. Toxicity Table 3. Hematologic toxicities expressed as percentage of patients Conclusion – no significant difference between treatments

  37. Which Exposure Metric? AUCgemcitabine gemcitabine AUC-driven model AUCdFdU dFdU AUC-driven model AUCdFdCTP dFdCTP AUC-driven model Dosegemcitabine gemcitabine Dose-driven model

  38. Tumour Size – Effect of GemcitabineVisual Predictive Check Scatterplot Comparison Median and 95% Interval Comparison

  39. Tumour SizeGemcitabine Dose

  40. Tumour SizeGemcitabine Dose-Response

  41. Tumour SizeGemcitabine Dose-Response

  42. Tumour SizeGemcitabine Dose-Response

  43. Tumour SizeGemcitabine Dose-Response

  44. Tumour SizeGemcitabine Dose-Response

  45. Visual Predictive Check FDA Advisory Committee for Pharmaceutical Sciences and Clinical Pharmacology Meeting, March 18–19, 2008. http://www.fda.gov/ohrms/dockets/ac/08/briefing/2008-4351b1-01-FDA.pdf

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