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Table 5 Sensitivity, specificity and efficiency metrics of the approach using the breast thermography basis  5 Conclusion  EEE  From the results, it is observed that the deep network approach wit!  h DWNN was  able to represent the images well. When associated with support vector machines  (SVM), the identification of lesions in breast thermograms reached around 99% and more than 0.95 kappa index. Good results were also  an accuracy obtained with  MLP, Random Forest and ELM, indicating that the problem can be generalized, but  often in a non-linear way. The good performance of these methods ex results obtained with decision trees (J48 and Random Tree), since t commonly achieve good results when the basis is very specific. The performances with Bayesian methods point to a considerable depend the attributes.  plains the low hese methods relatively low ency between

Table 5 Sensitivity, specificity and efficiency metrics of the approach using the breast thermography basis 5 Conclusion EEE From the results, it is observed that the deep network approach wit! h DWNN was able to represent the images well. When associated with support vector machines (SVM), the identification of lesions in breast thermograms reached around 99% and more than 0.95 kappa index. Good results were also an accuracy obtained with MLP, Random Forest and ELM, indicating that the problem can be generalized, but often in a non-linear way. The good performance of these methods ex results obtained with decision trees (J48 and Random Tree), since t commonly achieve good results when the basis is very specific. The performances with Bayesian methods point to a considerable depend the attributes. plains the low hese methods relatively low ency between