Free to read Modern statistical models and computational methods can now incorporate uncertainty of the parameters used in Quantitative Microbial Risk Assessments (QMRA). Many QMRAs use Monte Carlo methods, but work from fixed estimates for means, variances and other parameters. We illustrate the ease of estimating all parameters contemporaneously with the risk assessment, incorporating all the parameter uncertainty arising from the experiments from which these parameters are estimated. A Bayesian approach is adopted, using Markov Chain Monte Carlo Gibbs sampling (MCMC) via the freely available software, WinBUGS. The method and its ease of implementation are illustrated by a case study that involves incorporating three disparate datasets in...
Quantitative Microbial Risk Assessment Institute HandbookThis chapter provides a review of concepts ...
Quantitative microbial risk analysis modelling is increasingly being used in food safety as a tool t...
Markov chain Monte Carlo (MCMC) approaches to sampling directly from the joint posterior distributio...
Modern statistical models and computational methods can now incorporate uncertainty of the parameter...
Quantitative Microbial Risk Assessment (MRA) uses models to describe real-world systems (e.g. the pa...
A framework using maximum likelihood estimation (MLE) is used to fit a probability distribution to a...
Quantitative Microbiological Risk Assessment (QMRA) is a structured methodology used to assess the r...
Epidemiology and quantitative microbiological risk assessment are disciplines in which the same publ...
Variability and uncertainty are important factors for quantitative microbiological risk assessment (...
The aim of quantitative microbiological risk assessment is to estimate the risk of illness caused by...
Multi-parameter models in systems biology are typically ‘sloppy’: some parameters or combinations of...
Building mathematical models in predictive microbiology is a data driven science. As such, the exper...
Background: The definition of realistic models for microbial risk assessment (MRA) requires the incl...
Variability is inherent in biology and also substantial for microbial populations. In the context of...
Quantitative microbial risk assessment (QMRA) is widely accepted for characterizing the microbial ri...
Quantitative Microbial Risk Assessment Institute HandbookThis chapter provides a review of concepts ...
Quantitative microbial risk analysis modelling is increasingly being used in food safety as a tool t...
Markov chain Monte Carlo (MCMC) approaches to sampling directly from the joint posterior distributio...
Modern statistical models and computational methods can now incorporate uncertainty of the parameter...
Quantitative Microbial Risk Assessment (MRA) uses models to describe real-world systems (e.g. the pa...
A framework using maximum likelihood estimation (MLE) is used to fit a probability distribution to a...
Quantitative Microbiological Risk Assessment (QMRA) is a structured methodology used to assess the r...
Epidemiology and quantitative microbiological risk assessment are disciplines in which the same publ...
Variability and uncertainty are important factors for quantitative microbiological risk assessment (...
The aim of quantitative microbiological risk assessment is to estimate the risk of illness caused by...
Multi-parameter models in systems biology are typically ‘sloppy’: some parameters or combinations of...
Building mathematical models in predictive microbiology is a data driven science. As such, the exper...
Background: The definition of realistic models for microbial risk assessment (MRA) requires the incl...
Variability is inherent in biology and also substantial for microbial populations. In the context of...
Quantitative microbial risk assessment (QMRA) is widely accepted for characterizing the microbial ri...
Quantitative Microbial Risk Assessment Institute HandbookThis chapter provides a review of concepts ...
Quantitative microbial risk analysis modelling is increasingly being used in food safety as a tool t...
Markov chain Monte Carlo (MCMC) approaches to sampling directly from the joint posterior distributio...