Dynamic magnetic resonance images (DMRIs) are one of the major tools for diagnosing nasal tumors in recent years. The purpose\r\nof this research is to propose a new method to be able to automatically detect tumor region and compare three classifiers� tumor\r\ndetection performance for DMRI. These three classifiers are AdaBoost, SVM, and Bayes-Gaussian classifier. Three measurable\r\nmetrics, sensitivity, specificity, accuracy values, match percent, and correspondence ratio, are used for evaluation of each specific\r\nclassifiers. The experimental results show that SVM has the best sensitivity value, and Bayesian classifier has the best specificity\r\nand accuracy values. Moreover, the detected tumor regions that are marked with red color are shown by using each of these three\r\nclassifiers.
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