Literature DB >> 15493516

Assessing convergence of Markov chain Monte Carlo simulations in hierarchical Bayesian models for population pharmacokinetics.

Michael G Dodds1, Paolo Vicini.   

Abstract

Advances in computer hardware and the associated computer-intensive algorithms made feasible by these advances [like Markov chain Monte Carlo (MCMC) data analysis techniques] have made possible the application of hierarchical full Bayesian methods in analyzing pharmacokinetic and pharmacodynamic (PK-PD) data sets that are multivariate in nature. Pharmacokinetic data analysis in particular has been one area that has seized upon this technology to refine estimates of drug parameters from sparse data gathered in a large, highly variable population of patients. A drawback in this type of analysis is that it is difficult to quantitatively assess convergence of the Markov chains to a target distribution, and thus, it is sometimes difficult to assess the reliability of estimates gained from this procedure. Another complicating factor is that, although the application of MCMC methods to population PK-PD problems has been facilitated by new software designed for the PK-PD domain (specifically PKBUGS), experts in PK-PD may not have the necessary experience with MCMC methods to detect and understand problems with model convergence. The objective of this work is to provide an example of a set of diagnostics useful to investigators, by analyzing in detail three convergence criteria (namely the Raftery and Lewis, Geweke, and Heidelberger and Welch methods) on a simulated problem and with a rule of thumb of 10,000 chain elements in the Markov chain. We used two publicly available software packages to assess convergence of MCMC parameter estimates; the first performs Bayesian parameter estimation (PKBUGS/WinBUGS), and the second is focused on posterior analysis of estimates (BOA). The main message that seems to emerge is that accurately estimating confidence regions for the parameters of interest is more demanding than estimating the parameter means. Together, these tools provide numerical means by which an investigator can establish confidence in convergence and thus in the estimated parameters derived from hierarchical full Bayesian pharmacokinetic data analysis.

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Year:  2004        PMID: 15493516     DOI: 10.1114/b:abme.0000039363.94089.08

Source DB:  PubMed          Journal:  Ann Biomed Eng        ISSN: 0090-6964            Impact factor:   3.934


  3 in total

1.  Propagation of population PK and PD information using a Bayesian approach: dealing with non-exchangeability.

Authors:  Aristides Dokoumetzidis; Leon Aarons
Journal:  J Pharmacokinet Pharmacodyn       Date:  2005-12-12       Impact factor: 2.745

2.  Modeling boundary conditions for balanced proliferation in metastatic latency.

Authors:  Donald P Taylor; Jakob Z Wells; Andrej Savol; Chakra Chennubhotla; Alan Wells
Journal:  Clin Cancer Res       Date:  2013-01-17       Impact factor: 12.531

3.  Comparing models for perfluorooctanoic acid pharmacokinetics using Bayesian analysis.

Authors:  John F Wambaugh; Hugh A Barton; R Woodrow Setzer
Journal:  J Pharmacokinet Pharmacodyn       Date:  2009-01-08       Impact factor: 2.745

  3 in total

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