Exploring heterogeneity in tumour data using Markov chain Monte Carlo
- 17 April 2003
- journal article
- research article
- Published by Wiley in Statistics in Medicine
- Vol. 22 (10) , 1691-1707
- https://doi.org/10.1002/sim.1441
Abstract
We describe a Bayesian approach to incorporate between‐individual heterogeneity associated with parameters of complicated biological models. We emphasize the use of the Markov chain Monte Carlo (MCMC) method in this context and demonstrate the implementation and use of MCMC by analysis of simulated overdispersed Poisson counts and by analysis of an experimental data set on preneoplastic liver lesions (their number and sizes) in the presence of heterogeneity. These examples show that MCMC‐based estimates, derived from the posterior distribution with uniform priors, may agree well with maximum likelihood estimates (if available). However, with heterogeneous parameters, maximum likelihood estimates can be difficult to obtain, involving many integrations. In this case, the MCMC method offers substantial computational advantages. Copyright © 2003 John Wiley & Sons, Ltd.Keywords
This publication has 15 references indexed in Scilit:
- Distinguishing Effects on Tumor Multiplicity and Growth Rate in Chemoprevention ExperimentsBiometrics, 2000
- A method for parametric estimation of the number and size distribution of cell clusters from observations in a section plane.Published by JSTOR ,1998
- A biologically based model for the analysis of premalignant foci of arbitrary shapeMathematical Biosciences, 1996
- Bayesian Computation and Stochastic SystemsStatistical Science, 1995
- On Markov Chain Monte Carlo AccelerationJournal of Computational and Graphical Statistics, 1994
- Practical Markov Chain Monte CarloStatistical Science, 1992
- Two‐Event Model for Carcinogenesis: Biological, Mathematical, and Statistical ConsiderationsRisk Analysis, 1990
- Quantitative analysis of enzyme-altered foci in rat hepatocarcinogenesis experiments—I. Single agent regimenCarcinogenesis: Integrative Cancer Research, 1989
- Monte Carlo sampling methods using Markov chains and their applicationsBiometrika, 1970