A Bayesian Approach for Dose-Escalation in a Phase I Clinical Trial Incorporating Pharmacodynamic Endpoints

Bayesian decision procedures have already been proposed for and implemented in Phase I dose-escalation studies in healthy volunteers. The procedures have been based on pharmacokinetic responses reflecting the concentration of the drug in blood plasma and are conducted to learn about the dose-response relationship while avoiding excessive concentrations. However, in many dose-escalation studies, pharmacodynamic endpoints such as heart rate or blood pressure are observed, and it is these that should be used to control dose-escalation. These endpoints introduce additional complexity into the modeling of the problem relative to pharmacokinetic responses. Firstly, there are responses available following placebo administrations. Secondly, the pharmacodynamic responses are related directly to measurable plasma concentrations, which in turn are related to dose. Motivated by experience of data from a real study conducted in a conventional manner, this paper presents and evaluates a Bayesian procedure devised for the simultaneous monitoring of pharmacodynamic and pharmacokinetic responses. Account is also taken of the incidence of adverse events. Following logarithmic transformations, a linear model is used to relate dose to the pharmacokinetic endpoint and a quadratic model to relate the latter to the pharmacodynamic endpoint. A logistic model is used to relate the pharmacokinetic endpoint to the risk of an adverse event.

[1]  Harriet Black Nembhard,et al.  Statistical Methods for Dose-Finding Experiments , 2008, Technometrics.

[2]  John Whitehead,et al.  Bayesian decision procedures for binary and continuous bivariate dose‐escalation studies , 2006, Pharmaceutical statistics.

[3]  J. Wernicke,et al.  Cardiovascular Effects of Atomoxetine in Children, Adolescents, and Adults , 2003, Drug safety.

[4]  J O'Quigley,et al.  Continual reassessment method: a practical design for phase 1 clinical trials in cancer. , 1990, Biometrics.

[5]  John Whitehead,et al.  Bayesian decision procedures for dose-escalation based on evidence of undesirable events and therapeutic benefit. , 2006, Statistics in medicine.

[6]  J Whitehead,et al.  Easy-to-implement Bayesian methods for dose-escalation studies in healthy volunteers. , 2001, Biostatistics.

[7]  Andrew Wright,et al.  An evaluation of Bayesian designs for dose‐escalation studies in healthy volunteers , 2006, Statistics in medicine.

[8]  John Whitehead,et al.  Implementation of a Bayesian design in a dose-escalation study of an experimental agent in healthy volunteers. , 2008, Biometrics.

[9]  J Whitehead,et al.  Bayesian decision procedures based on logistic regression models for dose-finding studies. , 1998, Journal of biopharmaceutical statistics.

[10]  Yinghui Zhou,et al.  Practical Implementation of Bayesian Dose-Escalation Procedures , 2003 .

[11]  William F Rosenberger,et al.  Competing designs for phase I clinical trials: a review , 2002, Statistics in medicine.

[12]  S. Chevret,et al.  Statistical Methods for Dose-Finding Experiments: Chevret/Statistical Methods for Dose-Finding Experiments , 2006 .

[13]  Naitee Ting Dose Finding in Drug Development , 2006 .

[14]  S. Piantadosi,et al.  Improved designs for dose escalation studies using pharmacokinetic measurements. , 1996, Statistics in medicine.