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dc.contributor.authorTasoulis, Dimitris K.en
dc.contributor.authorSpyridonos, Panagiotaen
dc.contributor.authorPlagianakos, Vassilis P.en
dc.contributor.authorRavazoula, Panagiotaen
dc.contributor.authorNikiforidis, Georgiosen
dc.contributor.authorVrahatis, Michael N.en
dc.creatorTasoulis, Dimitris K.en
dc.creatorSpyridonos, Panagiotaen
dc.creatorPlagianakos, Vassilis P.en
dc.creatorRavazoula, Panagiotaen
dc.creatorNikiforidis, Georgiosen
dc.creatorVrahatis, Michael N.en
dc.date.accessioned2018-06-22T09:53:20Z
dc.date.available2018-06-22T09:53:20Z
dc.date.issued2006
dc.identifier.urihttps://gnosis.library.ucy.ac.cy/handle/7/41786
dc.description.abstractOBJECTIVE: The paper aims at improving the prediction of superficial bladder recurrence. To this end, feedforward neural networks (FNNs) and a feature selection method based on unsupervised clustering, were employed. MATERIAL AND METHODS: A retrospective prognostic study of 127 patients diagnosed with superficial urinary bladder cancer was performed. Images from biopsies were digitized and cell nuclei features were extracted. To design FNN classifiers, different training methods and architectures were investigated. The unsupervised k-windows (UKW) and the fuzzy c-means clustering algorithms were applied on the feature set to identify the most informative feature subsets. RESULTS: UKW managed to reduce the dimensionality of the feature space significantly, and yielded prediction rates 87.95% and 91.41%, for non-recurrent and recurrent cases, respectively. The prediction rates achieved with the reduced feature set were marginally lower compared to the ones attained with the complete feature set. The training algorithm that exhibited the best performance in all cases was the adaptive on-line backpropagation algorithm. CONCLUSIONS: FNNs can contribute to the accurate prognosis of bladder cancer recurrence. The proposed feature selection method can remove redundant information without a significant loss in predictive accuracy, and thereby render the prognostic model less complex, more robust, and hence suitable for clinical use.en
dc.language.isoengen
dc.sourceArtificial Intelligence in Medicineen
dc.subjectModelsen
dc.subjectAlgorithmsen
dc.subjectHumansen
dc.subjectNeoplasm stagingen
dc.subjectLocalen
dc.subjectNeoplasm recurrenceen
dc.subjectPrognosisen
dc.subjectBiologicalen
dc.subjectUrinary bladder neoplasmsen
dc.subjectCell nucleusen
dc.subjectFuzzy logicen
dc.titleCell-nuclear data reduction and prognostic model selection in bladder tumor recurrenceen
dc.typeinfo:eu-repo/semantics/article
dc.identifier.doi10.1016/j.artmed.2006.07.008
dc.description.volume38
dc.description.issue3
dc.description.startingpage291
dc.description.endingpage303
dc.author.facultyΙατρική Σχολή / Medical School
dc.author.departmentΙατρική Σχολή / Medical School
dc.type.uhtypeArticleen
dc.contributor.orcidPlagianakos, Vassilis P. [0000-0002-4266-701X]
dc.contributor.orcidNikiforidis, Georgios [0000-0002-8754-5091]
dc.contributor.orcidVrahatis, Michael N. [0000-0001-8357-7435]
dc.contributor.orcidSpyridonos, Panagiota [0000-0002-5021-6577]
dc.gnosis.orcid0000-0002-4266-701X
dc.gnosis.orcid0000-0002-8754-5091
dc.gnosis.orcid0000-0001-8357-7435
dc.gnosis.orcid0000-0002-5021-6577


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