Renoir, Pneumon-IA and Terap-IA: three medical applications based on fuzzy logic.

Abstract:

:The research at the IIIA has produced over more than a decade two versions of a tool for developing knowledge-based systems: Milord and Milord II. This tool has been mainly used for the development of medical applications. In this paper we summarize the Milord II approximate reasoning approach based on fuzzy sets, and three medical applications: rheumatology diagnosis (Renoir), pneumonia diagnosis (Pneumon-IA) and pneumonia treatment (Terap-IA).

journal_name

Artif Intell Med

authors

Godo L,de Mántaras RL,Puyol-Gruart J,Sierra C

doi

10.1016/s0933-3657(00)00080-4

subject

Has Abstract

pub_date

2001-01-01 00:00:00

pages

153-62

issue

1-3

eissn

0933-3657

issn

1873-2860

pii

S0933365700000804

journal_volume

21

pub_type

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