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Feature selection for a cooperative coevolutionary classifier in liver fibrosis diagnosis
Authors:Stoean Catalin  Stoean Ruxandra  Lupsor Monica  Stefanescu Horia  Badea Radu
Affiliation:aDepartment of Computer Science, University of Craiova, A. I. Cuza Str., No. 13, 200585 Craiova, Romania;bDepartment of Ultrasonography, 3rd Medical Clinic, University of Medicine and Pharmacy, Cluj - Napoca, Croitorilor Str., No. 19–21, 400162 Cluj-Napoca, Romania
Abstract:This paper presents an automatic tool capable to learn from a patients data set with 24 medical indicators characterizing each sample and to subsequently use the acquired knowledge to differentiate between five degrees of liver fibrosis. The indicators represent clinical observations and the liver stiffness provided by the new, non-invasive procedure of Fibroscan. The proposed technique combines a hill climbing algorithm that selects subsets of important attributes for an accurate classification and a core represented by a cooperative coevolutionary classifier that builds rules for establishing the diagnosis for every new patient. The results of the novel method proved to be superior as compared to the ones obtained by other important classification techniques from the literature. Additionally, the proposed methodology extracts a set of the most meaningful attributes from the available ones.
Keywords:Classification   Evolutionary algorithm   Cooperative coevolution   Feature selection   Hill climbing   Liver fibrosis staging
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