The Classifier for Prediction of Peri-operative Complications in Cervical Cancer Treatment
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  • 作者:Jacek Kluska (24)
    Maciej Kusy (24)
    Bogdan Obrzut (25)
  • 关键词:Takagi ; Sugeno system ; gene expression programming ; cervical cancer ; complications prediction
  • 刊名:Lecture Notes in Computer Science
  • 出版年:2014
  • 出版时间:2014
  • 年:2014
  • 卷:8468
  • 期:1
  • 页码:143-154
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  • 作者单位:Jacek Kluska (24)
    Maciej Kusy (24)
    Bogdan Obrzut (25)

    24. Faculty of Electrical and Computer Engineering, Rzesz贸w University of Technology, 35-959, Rzesz贸w, Powsta艅c贸w Warszawy 12, Poland
    25. Faculty of Medicine, University of Rzesz贸w, 35-205, Rzesz贸w, Warszawska 26a, Poland
  • ISSN:1611-3349
文摘
This paper addresses the problem of creating a new classifier as highly interpretable fuzzy rule-based system, based on the analytical theory of fuzzy modeling and gene expression programming. This approach is applied to solve the prediction problem of peri-operative complications of radical hysterectomy in patients with cervical cancer. The developed classifier has the form of the set of fuzzy metarules, which are readable for the medical community, and additionally, is accurate enough. The consequents of the metarules describe the presence or absence of peri-operative complications. For the construction of the classifier we can use the fuzzified, binarized or both types of the attributes. We also compare the efficiency of our model with the decision trees and C5 algorithm.

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