TY - JOUR TI - Segmentation of acute pulmonary embolism in computed tomography pulmonary angiography using the deep learning method AB - Introduction: Pulmonary embolism is a type of thromboembolism seen in the main pulmonary artery and its branches. This study aimed to diagnose acute pulmonary embolism using the deep learning method in computed tomograp- hic pulmonary angiography (CTPA) and perform the segmentation of pulmo- nary embolism data. Materials and Methods: The CTPA images of patients diagnosed with pulmo- nary embolism who underwent scheduled imaging were retrospectively eva- luated. After data collection, the areas that were diagnosed as embolisms in the axial section images were segmented. The dataset was divided into three parts: training, validation, and testing. The results were calculated by selecting 50% as the cut-off value for the intersection over the union. Results: Images were obtained from 1.550 patients. The mean age of the pati- ents was 64.23 ± 15.45 years. A total of 2.339 axial computed tomography images obtained from the 1.550 patients were used. The PyTorch U-Net was used to train 400 epochs, and the best model, epoch 178, was recorded. In the testing group, the number of true positives was determined as 471, the number of false positives as 35, and 27 cases were not detected. The sensitivity of CTPA segmentation was 0.95, the precision value was 0.93, and the F1 score value was 0.94. The area under the curve value obtained in the receiver operating characteristic analysis was calculated as 0.88. Conclusion: In this study, the deep learning method was successfully emplo- yed for the segmentation of acute pulmonary embolism in CTPA, yielding positive outcomes. AU - Odabas, Alper AU - ALATAS, FÜSUN AU - Aydın, Nevin AU - CIHAN, CAGATAY AU - Çelik, Özer AU - ASLAN, Ahmet Faruk AU - Yıldırım, Huseyin DO - 10.5578/tt.20239916 PY - 2023 JO - Tüberküloz ve Toraks VL - 71 IS - 2 SN - 0494-1373 SP - 131 EP - 137 DB - TRDizin UR - http://search/yayin/detay/1184694 ER -