BayCANN: Streamlining Bayesian Calibration with Artificial Neural Network Metamodeling
Hawre Jalal, Fernando Alarid-Escudero

TL;DR
BayCANN employs neural network metamodeling to enable efficient Bayesian calibration, significantly reducing computational time while improving accuracy in health decision models.
Contribution
This paper introduces BayCANN, a novel neural network-based approach for Bayesian calibration that enhances efficiency and accuracy over traditional methods.
Findings
BayCANN outperformed IMIS in accuracy for most parameters.
BayCANN reduced calibration time from 80 to 15 minutes.
The method is adaptable to various model complexities.
Abstract
Purpose: Bayesian calibration is theoretically superior to standard direct-search algorithm because it can reveal the full joint posterior distribution of the calibrated parameters. However, to date, Bayesian calibration has not been used often in health decision sciences due to practical and computational burdens. In this paper we propose to use artificial neural networks (ANN) as one solution to these limitations. Methods: Bayesian Calibration using Artificial Neural Networks (BayCANN) involves (1) training an ANN metamodel on a sample of model inputs and outputs, and (2) then calibrating the trained ANN metamodel instead of the full model in a probabilistic programming language to obtain the posterior joint distribution of the calibrated parameters. We demonstrate BayCANN by calibrating a natural history model of colorectal cancer to adenoma prevalence and cancer incidence data. In…
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