4.4 Article

Uncertainty and Patient Heterogeneity in Medical Decision Models

Journal

MEDICAL DECISION MAKING
Volume 30, Issue 2, Pages 194-205

Publisher

SAGE PUBLICATIONS INC
DOI: 10.1177/0272989X09342277

Keywords

uncertainty; patient heterogeneity; decision making; Markov models; Monte Carlo method; probabilistic sensitivity analysis; value of information analysis

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Parameter uncertainty, patient heterogeneity, and stochastic uncertainty of outcomes are increasingly important concepts in medical decision models. The purpose of this study is to demonstrate the various methods to analyze uncertainty and patient heterogeneity in a decision model. The authors distinguish various purposes of medical decision modeling, serving various stakeholders. Differences and analogies between the analyses are pointed out, as well as practical issues. The analyses are demonstrated with an example comparing imaging tests for patients with chest pain. For complicated analyses step-by-step algorithms are provided. The focus is on Monte Carlo simulation and value of information analysis. Increasing model complexity is a major challenge for probabilistic sensitivity analysis and value of information analysis. The authors discuss nested analyses that are required in patient-level models, and in nonlinear models for analyses of partial value of information analysis.

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