• Title of article

    Esophageal cancer prediction based on qualitative features using adaptive fuzzy reasoning method

  • Author/Authors

    Hamed, Raed I. University of Anbar - Faculty of Computer - Department of Computer Science, Iraq

  • From page
    129
  • To page
    139
  • Abstract
    Esophageal cancer is one of the most common cancers world-wide and also the most common cause of cancer death. In this paper, we present an adaptive fuzzy reasoning algorithm for rule-based systems using fuzzy Petri nets (FPNs), where the fuzzy production rules are represented by FPN. We developed an adaptive fuzzy Petri net (AFPN) reasoning algorithm as a prognostic system to predict the outcome for esophageal cancer based on the serum concentrations of C-reactive protein and albumin as a set of input variables. The system can perform fuzzy reasoning automatically to evaluate the degree of truth of the proposition representing the risk degree value with a weight value to be optimally tuned based on the observed data. In addition, the implementation process for esophageal cancer prediction is fuzzily deducted by the AFPN algorithm. Performance of the composite model is evaluated through a set of experiments. Simulations and experimental results demonstrate the effectiveness and performance of the proposed algorithms. A comparison of the predictive performance of AFPN models with other methods and the analysis of the curve showed the same results with an intuitive behavior of AFPN models
  • Keywords
    Esophageal cancer , Fuzzy Petri nets , Adaptive method , Qualitative features , Risk degrees
  • Journal title
    Journal Of King Saud University - Computer an‎d Information Sciences
  • Journal title
    Journal Of King Saud University - Computer an‎d Information Sciences
  • Record number

    2713619