Authors
Marcel AJ van Gerven, Babs G Taal, Peter JF Lucas
Publication date
2008/8/31
Journal
Journal of Biomedical Informatics
Volume
41
Issue
4
Pages
515-529
Publisher
Academic Press
Description
Prognostic models in medicine are usually been built using simple decision rules, proportional hazards models, or Markov models. Dynamic Bayesian networks (DBNs) offer an approach that allows for the incorporation of the causal and temporal nature of medical domain knowledge as elicited from domain experts, thereby allowing for detailed prognostic predictions. The aim of this paper is to describe the considerations that must be taken into account when constructing a DBN for complex medical domains and to demonstrate their usefulness in practice. To this end, we focus on the construction of a DBN for prognosis of carcinoid patients, compare performance with that of a proportional hazards model, and describe predictions for three individual patients. We show that the DBN can make detailed predictions, about not only patient survival, but also other variables of interest, such as disease progression, the effect …
Total citations
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Scholar articles
MAJ Van Gerven, BG Taal, PJF Lucas - Journal of biomedical informatics, 2008