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Please use this identifier to cite or link to this item: http://acervodigital.unesp.br/handle/11449/74875
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dc.contributor.authorCarvalho, V. O.-
dc.contributor.authorNeves, L. A.-
dc.contributor.authorDe Godoy, M. F.-
dc.contributor.authorMoreira, R. D.-
dc.contributor.authorMoriel, A. R.-
dc.contributor.authorMurta, L. O.-
dc.date.accessioned2014-05-27T11:28:42Z-
dc.date.accessioned2016-10-25T18:45:50Z-
dc.date.available2014-05-27T11:28:42Z-
dc.date.available2016-10-25T18:45:50Z-
dc.date.issued2013-03-26-
dc.identifierhttp://dx.doi.org/10.1007/978-3-642-21198-0_70-
dc.identifier.citation5th Latin American Congress on Biomedical Engineering (claib 2011): Sustainable Technologies For the Health of All, Pts 1 and 2. New York: Springer, v. 33, n. 1-2, p. 272-275, 2013.-
dc.identifier.issn1680-0737-
dc.identifier.urihttp://hdl.handle.net/11449/74875-
dc.identifier.urihttp://acervodigital.unesp.br/handle/11449/74875-
dc.description.abstractThis work combines symbolic machine learning and multiscale fractal techniques to generate models that characterize cellular rejection in myocardial biopsies and that can base a diagnosis support system. The models express the knowledge by the features threshold, fractal dimension, lacunarity, number of clusters, spatial percolation and percolation probability, all obtained with myocardial biopsies processing. Models were evaluated and the most significant was the one generated by the C4.5 algorithm for the features spatial percolation and number of clusters. The result is relevant and contributes to the specialized literature since it determines a standard diagnosis protocol. © 2013 Springer.en
dc.format.extent272-275-
dc.language.isopor-
dc.sourceScopus-
dc.subjectmultiscale fractal techniques-
dc.subjectmyocardial biopsies images-
dc.subjectsymbolic machine learning-
dc.subjectC4.5 algorithm-
dc.subjectDiagnosis support systems-
dc.subjectLacunarity-
dc.subjectMultiscale fractals-
dc.subjectNumber of clusters-
dc.subjectPercolation probability-
dc.subjectSymbolic machine learning-
dc.subjectBiomedical engineering-
dc.subjectFractal dimension-
dc.subjectLearning systems-
dc.subjectSolvents-
dc.subjectBiopsy-
dc.titleAprendizado de máquina simbólico e técnicas fractais para caracterizar rejeição em biópsia miocárdicapt
dc.typeoutro-
dc.contributor.institutionUniversidade Estadual Paulista (UNESP)-
dc.contributor.institutionFaculdade de Medicina de São José do Rio Preto (FAMERP)-
dc.contributor.institutionInstituto de Anatomia Patológica e Citopatologia-
dc.contributor.institutionUniversidade de São Paulo (USP)-
dc.description.affiliationUniversidade Estadual Paulista DEMAC, Rio Claro-
dc.description.affiliationNUTECC Famerp, São José do Rio Preto-
dc.description.affiliationFaculdade de Medicina de São José Do Rio Preto, São José do Rio Preto-
dc.description.affiliationInstituto de Anatomia Patológica e Citopatologia, São José do Rio Preto-
dc.description.affiliationUniversidade de São Paulo FFCLRP Depto. Computação e Matemática, Ribeirão Preto-
dc.description.affiliationUnespUniversidade Estadual Paulista DEMAC, Rio Claro-
dc.identifier.doi10.1007/978-3-642-21198-0_70-
dc.rights.accessRightsAcesso restrito-
dc.relation.ispartofIFMBE Proceedings-
dc.identifier.scopus2-s2.0-84875250024-
Appears in Collections:Artigos, TCCs, Teses e Dissertações da Unesp

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