Case-based reasoning for medical decision support tasks: the Inreca approach.

Abstract:

:We describe an approach for developing knowledge-based medical decision support systems based on the new technology of case-based reasoning. This work is based on the results of the Inreca European project and preliminary results from the Inreca + project which mainly deals with medical applications. One goal was to start from case-based reasoning technology for technical diagnosis and 'scale-up' to more general non-technical decision support tasks as typically given in medical domains. Inreca technology has been used to build an initial decision support system at the Russian Toxicology Information and Advisory Center in Moscow for diagnosing poison cases caused by psychotropes.

journal_name

Artif Intell Med

authors

Althoff KD,Bergmann R,Wess S,Manago M,Auriol E,Larichev OI,Bolotov A,Zhuravlev YI,Gurov SI

doi

10.1016/s0933-3657(97)00038-9

subject

Has Abstract

pub_date

1998-01-01 00:00:00

pages

25-41

issue

1

eissn

0933-3657

issn

1873-2860

pii

S0933-3657(97)00038-9

journal_volume

12

pub_type

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