Using Resistin, Glucose, Age and BMI and Pruning Fuzzy Neural Network for the Construction of Expert Systems in the Prediction of Breast Cancer
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Vanessa Souza Araujo | Thiago Silva Rezende | Augusto Junio Guimaraes | Paulo Vitor de Campos Souza | Vinicius Jonathan Silva Araujo | P. V. C. Souza | A. J. Guimarães | T. S. Rezende | V. Araújo | Vanessa Souza Araújo | V. Araújo
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