Methods Inf Med 1989; 28(04): 346-351
DOI: 10.1055/s-0038-1636784
Original Article
Schattauer GmbH

Creation of Realistic Appearing Simulated Patient Cases Using the INTERNIST-1/QMR Knowledge Base and Interrelationship Properties of Manifestations

R. C. Parker
1   Section of Medical Informatics, Department of Medicine, University of Pittsburgh School of Medicine, Pittsburgh Pa, U. S. A.
,
R. A. Miller
1   Section of Medical Informatics, Department of Medicine, University of Pittsburgh School of Medicine, Pittsburgh Pa, U. S. A.
› Author Affiliations
Further Information

Publication History

Publication Date:
17 February 2018 (online)

Abstract:

The Internist-1/0uick Medical Reference (OMR) knowledge base (KB) describes the clinical manifestations of some 600 diseases in the domain of internal medicine. This KB, while not representing deep causal modelling of disease processes, is nonetheless effective iri providing medical diagnostic assistance through the OMR medical decision support system. One potential application ofthis extensive KB is the generation of simulated patient cases for use in educating health professionals. However, the “flat” KB is not adequate for this because the clinical manifestations used in the disease descriptions are not mutually independent. While it is theoretically possible to construct disease descriptions which embody pathophysiologic mechanisms of disease causality, it is not practical from the standpoint of resource utilization. Short of constructing a causal knowledge base, the authors herein describe the generation of realistic appearing simulated patient case data using existing information in the knowledge base. This existing information in the KB is in the form of properties which represent a shallow form of interrelationships of the manifestations. The authors conclude that this ability to generate simulated cases represents another view in which to look at an extensive knowledge base, as well as having application to constructing intelligent tutoring systems for health professionals in training.

 
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