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Adaptive Bayesian learning for making risk-aware decisions: a case of trauma survival prediction

Research Output: Contribution to journal Article Peer-review

Open access

Abstract

Decision tree (DT) models provide a transparent approach to prediction of patient’s outcomes within a probabilistic framework. Averaging over DT models under certain conditions can deliver reliable estimates of predictive posterior probability distributions, which is of critical importance in the case of predicting an individual patient’s outcome. Reliable estimations of the distribution can be achieved within the Bayesian framework using Markov chain Monte Carlo (MCMC) and its Reversible Jump extension enabling DT models to grow to a reasonable size. Existing MCMC strategies however have limited ability to control DT structures and tend to sample overgrown DT models, making unreasonably small partitions, thus deteriorating the uncertainty calibration. This happens because the MCMC explores a DT model parameter space within a limited knowledge of the distribution of data partitions. We propose a new adaptive strategy which overcomes this limitation, and show that in the case of predicting trauma outcomes the number of data partitions can be significantly reduced, so that the unnecessary uncertainty of estimating the predictive posterior density is avoided. The proposed and existing strategies are compared in terms of entropy which, being calculated for predicted posterior distributions, represents the uncertainty in decisions. In this framework, the proposed method has outperformed the existing sampling strategies, so that the unnecessary uncertainty in decisions is efficiently avoided.

Publication Information

Output type

Research Output: Contribution to journal Article Peer-review

Original language

English

Article number

102634

Journal (Volume, Issue Number)

Artificial Intelligence in Medicine (Volume 143)

Publication milestones

  • Accepted/In press - 11/08/2023
  • Published - 14/08/2023

Publication status

Published - 14/08/2023

ISSN

0933-3657

External Publication IDs

  • handle.net: 10547/625969
  • Scopus: 85168557404