Author/Editor     Babić, Ankica
Title     Medical knowledge extraction: application of data analysis methods to support clinical decisions
Type     monografija
Place     Linkoping
Publisher     Linkoeping University medical informatics, Department of biomedical engineering
Publication year     1993
Volume     str. 150
ISBN     91-7871-177-0
Language     eng
Abstract     In building computer based clinical decision support extensive data analysis is sought to acquire all the medicalknowledge needed to formulate the decision rules. This study explores, compares and discusses approaches to knowledge extraction from medical data. Statistical methods (univariate, multivariate), probabilistic artificial intelligence approaches (inductive learning procedures, neural networks) and the rough sets were used for this purpose. The methods were applied in two clinical sets of data with well defined patients groups. The aim of the study was then to use different data analyticalmethods and extract knowledge, both of semantic and classification nature, enabling to differentiate among patients, observations and disease groups, what in turn was aimed to support clinical decisions. Semantic analysiswas performed in two ways. In prior analysis subgroups or patterns were formed based on thedistance within the data,while in posterior semantic analysis 'types' of observation falling into various groups and their measured values were explored. To study further discrimination, two empirical systems, based on principle of learning from examples, i.e. based on Quinlan's ID3 algorithm (the AssPro system) and CART (Classification and Regression Trees), were compared. The knowledge representation in both systems is tree structured,thus the comparison is made according to the complexity, accuracy and structure of their optimal decision trees. The inductive learning system was additionaly compared and evaluated in relation to the location model of discriminant analysis, the linear Ficherian discrimination and the rough sets. All methods used were analysed and compared for their theoretical and applicative performances, and in some cases they were assessed medical appropriateness.(Abstract truncated at 2000 characters.)
Descriptors     DECISION SUPPORT TECHNIQUES
ARTIFICIAL INTELLIGENCE
DECISION TREES
LIVER DISEASES