| Article ID: | iaor2008333 |
| Country: | Netherlands |
| Volume: | 42 |
| Issue: | 2 |
| Start Page Number: | 608 |
| End Page Number: | 625 |
| Publication Date: | Nov 2006 |
| Journal: | Decision Support Systems |
| Authors: | Wolff J. Gerard |
| Keywords: | artificial intelligence: decision support |
This paper describes a novel approach to medical diagnosis based on the SP theory of computing and cognition. The main attractions of this approach are: a format for representing diseases that is simple and intuitive; an ability to cope with errors and uncertainties in diagnostic information; the simplicity of storing statistical information as frequencies of occurrence of diseases; a method for evaluating alternative diagnostic hypotheses that yields true probabilities; and a framework that should facilitate unsupervised learning of medical knowledge and the integration of medical diagnosis with other AI applications.