Characterization and valuation of uncertainty of calibrated parameters in stochastic decision models
Fernando Alarid-Escudero, Amy B. Knudsen, Jonathan Ozik, Nicholson, Collier, Karen M. Kuntz

TL;DR
This study investigates how different methods of characterizing uncertainty in calibrated parameters of stochastic decision models affect the valuation of that uncertainty in cost-effectiveness analysis, using a colorectal cancer screening model.
Contribution
It compares various approaches to uncertainty characterization in a Bayesian calibration framework and assesses their impact on decision-making value of information estimates.
Findings
Ignoring parameter correlation overestimates uncertainty value.
Full posterior distributions yield similar expected information value as MAP estimates.
Different uncertainty characterizations significantly influence the estimated value of reducing uncertainty.
Abstract
We evaluated the implications of different approaches to characterize uncertainty of calibrated parameters of stochastic decision models (DMs) in the quantified value of such uncertainty in decision making. We used a microsimulation DM of colorectal cancer (CRC) screening to conduct a cost-effectiveness analysis (CEA) of a 10-year colonoscopy screening. We calibrated the natural history model of CRC to epidemiological data with different degrees of uncertainty and obtained the joint posterior distribution of the parameters using a Bayesian approach. We conducted a probabilistic sensitivity analysis (PSA) on all the model parameters with different characterizations of uncertainty of the calibrated parameters and estimated the value of uncertainty of the different characterizations with a value of information analysis. All analyses were conducted using high performance computing resources…
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Taxonomy
TopicsHealth Systems, Economic Evaluations, Quality of Life · Statistical Methods and Bayesian Inference · Forecasting Techniques and Applications
