Annotated Bayesian networks: a tool to integrate textual and probabilistic medical knowledge

TitleAnnotated Bayesian networks: a tool to integrate textual and probabilistic medical knowledge
Publication TypeConference Paper
Year of Publication2001
AuthorsAntal, P., T. Mészáros, D. B. Moor, and T. P. Dobrowiecki
Conference Name{Computer-Based} Medical Systems, 2001. {CBMS} 2001. Proceedings. 14th {IEEE} Symposium on
Abstract

We have previously (2000) reported on the development of Bayesian network models for the pre-operative discrimination between malignant and benign ovarian masses. The models incorporated both medical background knowledge and patient data, which required the traceability of the incorporated prior medical knowledge. For this purpose, we followed a particular annotation method for Bayesian networks using a dedicated representation. In this paper, we present the resulting annotated Bayesian network {(ABN)} representation that consists of a regular Bayesian network, with standard probabilistic semantics, and a corresponding semantic network, to which textual information sources are attached. We demonstrate the applicability of such a dual model to represent both the rigorous probabilistic and the unconstrained textual medical knowledge. We describe methods on how these {ABN} models can be used: (1) as a domain model to arrange the personal textual information of a clinician according to the semantics of the domain, (2) in decision support to provide detailed (and even personalized) explanation, and (3) to enhance the information retrieval to find new textual information more efficiently

DOI{10.1109/CBMS.2001.941717}