Medical idioms for clinical Bayesian network development
Evangelia Kyrimi, Mariana Raniere Neves, Scott McLachlan, Martin Neil,, William Marsh, Norman Fenton

TL;DR
This paper introduces medical idioms, structured reasoning patterns, to systematically develop and improve Bayesian Networks in medicine, enhancing clarity and methodological rigor.
Contribution
It extends existing idiom-based approaches with specific medical reasoning patterns, including interventional and counterfactual reasoning, for better BN development.
Findings
Medical idioms improve clarity of BN models
Application to coronary artery disease examples
Enhanced structure in published BNs
Abstract
Bayesian Networks (BNs) are graphical probabilistic models that have proven popular in medical applications. While numerous medical BNs have been published, most are presented fait accompli without explanation of how the network structure was developed or justification of why it represents the correct structure for the given medical application. This means that the process of building medical BNs from experts is typically ad hoc and offers little opportunity for methodological improvement. This paper proposes generally applicable and reusable medical reasoning patterns to aid those developing medical BNs. The proposed method complements and extends the idiom-based approach introduced by Neil, Fenton, and Nielsen in 2000. We propose instances of their generic idioms that are specific to medical BNs. We refer to the proposed medical reasoning patterns as medical idioms. In addition, we…
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