FUZZY METHODS FOR MEDICAL DIAGNOSIS
Authors: INNOCENT, P. R.; JOHN, R. I.; GARIBALDI, J. M.
Source: Applied Artificial Intelligence, Volume 19, Number 1, Number 1/January 2005 , pp. 69-98(30)
Publisher: Taylor and Francis Ltd
Abstract:
This paper argues that fuzzy representations are appropriate in applications where there are major sources of imprecision and/or uncertainty. Case studies of fuzzy approaches to specific problems of medical diagnosis and classification are described in support of this argument. The case studies are in the areas of categorical consistency, diagnostic monitoring, and scoring. The solutions use a variety of fuzzy methods, including clustering, fuzzy set aggregation, and type-2 fuzzy set modeling of linguistic approximations. It is concluded that the fuzzy approach to the development of artificial intelligence in application systems in beneficial in these contexts because of the need to focus on uncertainty as a main issue.Document Type: Research article
DOI: http://dx.doi.org/10.1080/08839510590887414
Affiliations: 1: The Centre for Computational Intelligence, Department of Computer Science, De Montfort University, Leicester, UK
Publication date: 2005-01-01
- Information for Authors
- Subscribe to this Title
- ingentaconnect is not responsible for the content or availability of external websites
- In this: publication
- By this: publisher
- In this Subject: Computer Science
- By this author: INNOCENT, P. R. ; JOHN, R. I. ; GARIBALDI, J. M.

Shopping cart
Receive new issue alert