Expected Value of Sample Information Calculations in Medical Decision Modeling
Top Cited Papers
- 1 March 2004
- journal article
- other
- Published by SAGE Publications in Medical Decision Making
- Vol. 24 (2) , 207-227
- https://doi.org/10.1177/0272989x04263162
Abstract
There has been an increasing interest in using expected value of information (EVI) theory in medical decision making, to identify the need for further research to reduce uncertainty in decision and as a tool for sensitivity analysis. Expected value of sample information (EVSI) has been proposed for determination of optimum sample size and allocation rates in randomized clinical trials. This article derives simple Monte Carlo, or nested Monte Carlo, methods that extend the use of EVSI calculations to medical decision applications with multiple sources of uncertainty, with particular attention to the form in which epidemiological data and research findings are structured. In particular, information on key decision parameters such as treatment efficacy are invariably available on measures of relative efficacy such as risk differences or odds ratios, but not on model parameters themselves. In addition, estimates of model parameters and of relative effect measures in the literature may be heterogeneous, reflecting additional sources of variation besides statistical sampling error. The authors describe Monte Carlo procedures for calculating EVSI for probability, rate, or continuous variable parameters in multi parameter decision models and approximate methods for relative measures such as risk differences, odds ratios, risk ratios, and hazard ratios. Where prior evidence is based on a random effects meta-analysis, the authors describe different ESVI calculations, one relevant for decisions concerning a specific patient group and the other for decisions concerning the entire population of patient groups. They also consider EVSI methods for new studies intended to update information on both baseline treatment efficacy and the relative efficacy of 2 treatments. Although there are restrictions regarding models with prior correlation between parameters, these methods can be applied to the majority of probabilistic decision models. Illustrative worked examples of EVSI calculations are given in an appendix.Keywords
This publication has 45 references indexed in Scilit:
- Markov Chain Monte Carlo Estimation of a Multiparameter Decision Model: Consistency of Evidence and the Accurate Assessment of UncertaintyMedical Decision Making, 2002
- Bayesian random effects meta‐analysis of trials with binary outcomes: methods for the absolute risk difference and relative risk scalesStatistics in Medicine, 2002
- Issues in the selection of a summary statistic for meta‐analysis of clinical trials with binary outcomesStatistics in Medicine, 2002
- Formulary Submission Guidelines for Blue Cross and Blue Shield of Colorado and NevadaPharmacoEconomics, 1999
- An economic approach to clinical trial design and research priority-settingHealth Economics, 1996
- Updating Uncertainty in an Integrated Risk Assessment: Conceptual Framework and MethodsRisk Analysis, 1995
- Factored Stochastic TreesMedical Decision Making, 1993
- Meta-analysis in clinical trialsControlled Clinical Trials, 1986
- Probabilistic Analysis of Decision Trees Using Monte Carlo SimulationMedical Decision Making, 1986
- Probabilistic Sensitivity Analysis Using Monte Carlo SimulationMedical Decision Making, 1985