Abstract
Tuberculosis (TB) is an infectious disease caused by Mycobacterium tuberculosis. Our study investigates the recognition of secondary pulmonary (SPTB). A novel F3 model is proposed. The first F means using a four-direction varying-distance gray-level co-occurrence matrix (FDVDGLCM) to analyze the chest CT images; the second F means a five-property feature set (FPFS) from the FDVDGLCM results; the third F means fuzzy support vector machine (FSVM). Besides, a slight adaption of multiple-way data augmentation is used to boost the training set. The 10 runs of 10-fold cross-validation demonstrate that this F3 model achieves a sensitivity of 93.68% +/- 1.75%, a specificity of 94.17% +/- 1.68%, a precision of 94.17% +/- 1.55%, an accuracy of 93.92% +/- 1.05%, an F1 score of 93.91% +/- 1.07%, an MCC of 87.88% +/- 2.09%, and an FMI of 93.92% +/- 1.06%. The AUC is 0.9624. The FSVM can give better performance than ordinary SVM. The proposed F3 model is superior to six state-of-the-art SPTB recognition models.