Survey
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Application of a Bayesian strategy for monitoring multiple outcomes (safety and efficacy) in early oncology clinical trials Application of a Bayesian strategy for monitoring multiple outcomes in early oncology clinical trials | 1 Phase I clinical trials in oncology ● Recommend a dose for further clinical development ● Design: ● Patients included in successive cohorts (usually n=3 in each cohort) ● All patients within the same cohort receive the same dose • First cohort receive the lowest dose • Primary endpoint: Dose-Limiting Toxicity • After completion of each cohort, decision is made on predefined algorithm to: • Escalate the dose • Stay at the same dose • De-escalate the dose • Stop the study 2 Several designs ● ● ● Up-and-Down designs ● « 3+3 » ● Accelerated Titration Design Model-based dose-response designs ● CRM: Continual Reassessment Method ● bCRM: CRM applied on two binary outcomes (safety and efficacy) ● Designs derived from the CRM : Escalation With Overdose Control (EWOC) bEWOC: Escalation With Overdose Control for bivariate outcome ● Dose-response relationships ● Plane (Probability of Activity , Probability of Toxicity) ● Design 3 Up-and-Down design 3+3 design Dose level (i) Enter 3 patients 0/3 DLT ≥ 2/3 DLT 1/3 DLT Add 3 patients 1/6 DLT Escalate to dose level (i+1) ≥ 2/6 DLT Dose level (i-1) is the MTD NOM DE LA | 4 Model-based dose-response relationship 100% a=0;b=1 logit[(d)] = a + exp(b) log(d/d*) Probability of DLT 75% a = -2 ; b = 1 50% a = -1 ; b = 0 Target level Target range 25% 0% 0 50 150 100 200 250 Dose NOM DE LA | 5 New drugs in development ● ● Cytotoxic drugs ● Assumption: Monotonous Dose-Efficacy relationship ● Dose level recommended: Maximum Tolerated Dose (MTD) • A dose with a probability of DLT closest to a target proportion Molecularly Targeted Agents (MTA) ● Non-monotonous Dose-Efficacy relationship ● Two endpoints: Toxicity and Efficacy (binary outcomes) Cytotoxic profile MTA profile NOM DE LA | 6 EWOC for bivariate outcome Dose-response models ● Safety model logit( P i ) = a1 exp( b1 ). log( di / d ) * 1 DLT Slope > 0 => Monotonous dose-toxicity relationship ● Efficacy model logit( P i RESP ) = a 2 b 2 . log( d i / d ) * 1 2 . log( d i / d 2 ) * 2 Non-monotonous dose-efficacy relationship PDLT : Probability of DLT d1* , d2* : Reference doses PRESP : Probability of Tumor Response 7 Bayesian estimation ● Gaussian a priori distributions for all parameters ● A posteriori distributions obtained by MCMC algorithm ● ● ● 3 independent chains Convergence checked by Brooks-Gelman-Rubin criterion Software tools ● R software version 2.12.2 ● BRugs package version 0.7.1 ● OpenBUGS software version 3.2.1 8 Dose-response curves and related credibility interval DLT Probability mean estimate Tolerability threshold 9 Dose-response curves and related credibility interval Response Probability mean estimate Interest threshold 9 Dose-response curves and related credibility interval 9 EWOC for bivariate binary outcome Binary endpoints ● DLT ● Tumor Response ● Plane (IP(Resp) , IP(DLT)) Not safe Not active Looking for doses that are in the Targeted Area: Active but not safe Over-toxicity e.g. doses such: IP(DLT)<0.35 IP(Resp)>0.5 Safe but not active Useless Moderate ● Targeted Active and safe Probability of Response IP(resp | di)=0.48 IP(DLT | di)=0.18 EWOC for bivariate outcome Predictions for dose level escalation decision Dose 300mg/kg 400mg/kg 300mg/kg 250mg/kg 200mg/kg 150mg/kg 11 Probability to be in each area 125 mg/kg 150 mg/kg 200 mg/kg 250 mg/kg 300 mg/kg 400 mg/kg 12 Conclusion ● Advantages ● Assess both Toxicity and Efficacy ● Take into account uncertainty and control the over-dosing ● ● Efficacy model more flexible for Molecularly Targeted Agents ● Decision and communication tool (clinician team) Limits / Next steps ● ● ● ● Limited data / Use PK sampling, PD-biomarkers, mechanistic modelling Better assessment of patient variability / Hierarchical models No Time-to-Event / Different kinds of toxicities (Acute and Cumulative) Different schedules / PK model 13 References ● ● ● ● ● [1] Booth C. M., Calvert A. H., Giaccone G.,Lobbe-Zoo M. W., Seymour L. K., Eisenhauer E. A. Endpoints and other considerations in phase I studies of targeted anticancer therapy: Recommendations from the task force on methodology for the development of innovative cancer therapies. European Journal of Cancer 2008, 44, 19-24. [2] O'Quigley J., Pepe M., Fisher L .Continual reassessment method: a practical design for phase 1 clinical trials in cancer. Biometrics 1990, 46, 33-48. [3] Neuenschwander B., Branson M., Gsponer T. Critical aspects of the bayesian approach to phase I cancer trials. Statistics in Medicine 2008, 27, 2420-2439. [4] Thall P. F., Cook J. D., Estey E. H. Adaptive dose selection using efficacytoxicity trade-off: Illustrations and practical considerations. Journal of Biopharmaceutical Statistics 2006, 16, 623-638. [5] Whitehead J., Hampson L., Zhou Y., Ledent E., Pereira A .A Bayesian approach for dose-escalation in a phase I clinical trial incorporating pharmacodynamic endpoints. Journal of Biopharmaceutical Statistics 2007, 6, 44. 14 Merci