Publication related to RSI or an RSI staff member

Uncertainty, variability, and sensitivity analysis in physiological pharmacokinetic models.

Physiologically based pharmacokinetic (PBPK) models are now commonly used to predict the dose of toxic metabolites of chemical substances reaching target tissues. A typical PBPK model can involve 20 or more physiological, physiochemical, and biochemical parameters, each of which is estimated with some degree of error. In this article, methods for assessing the impact of uncertainty in the parameter values on prediction of tissue dose are proposed, along with methods for identifying those parameters to which predictions of tissue doses are most sensitive. Many of the model parameters are related to body weight, which is assumed to vary in accordance with a doubly truncated normal distribution. The application of the proposed methods is illustrated using a PBPK model for benzene.

Authors

  • Krewski, D, Krewski D, Health Protection Branch, Health Canada, Ottawa, Ontario, Canada.

  • Wang, Y, Wang Y,

  • Bartlett, S, Bartlett S,

  • Krishnan, K, Krishnan K,

YEAR OF PUBLICATION: 1995
SOURCE: J Biopharm Stat. 1995 Nov;5(3):245-71.
JOURNAL TITLE ABBREVIATION: J Biopharm Stat
JOURNAL TITLE: Journal of biopharmaceutical statistics
ISSN: 1054-3406 (Print) 1054-3406 (Linking)
VOLUME: 5
ISSUE: 3
PAGES: 245-71
PLACE OF PUBLICATION: England
ABSTRACT:
Physiologically based pharmacokinetic (PBPK) models are now commonly used to predict the dose of toxic metabolites of chemical substances reaching target tissues. A typical PBPK model can involve 20 or more physiological, physiochemical, and biochemical parameters, each of which is estimated with some degree of error. In this article, methods for assessing the impact of uncertainty in the parameter values on prediction of tissue dose are proposed, along with methods for identifying those parameters to which predictions of tissue doses are most sensitive. Many of the model parameters are related to body weight, which is assumed to vary in accordance with a doubly truncated normal distribution. The application of the proposed methods is illustrated using a PBPK model for benzene.
LANGUAGE: eng
DATE OF PUBLICATION: 1995 Nov
DATE COMPLETED: 19960319
DATE REVISED: 20161123
MESH DATE: 1995/11/01 00:01
EDAT: 1995/11/01 00:00
STATUS: MEDLINE
PUBLICATION STATUS: ppublish
OWNER: NLM

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Daniel Krewski

Chief Risk Scientist

Dr. Daniel Krewski is Chief Risk Scientist and co-founder of Risk Sciences International (RSI), a firm established in 2006 to bring evidence-based, multidisciplinary expertise to the challenge of understanding, managing, and communicating risk. As RSI’s inaugural CEO and long-time scientific...
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