1. Automatic segmentation of nasopharyngeal carcinoma from CT images
- Author
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Bilel Daoud, Ali Khalfallah, Leila Farhat, Wafa Mnejja, N.A. Ken', ichi Morooka, Med Salim Bouhlel, and Jamel Daoud
- Subjects
Contouring ,Computer science ,business.industry ,Biomedical Engineering ,Cancer ,Pattern recognition ,Context (language use) ,Image segmentation ,medicine.disease ,Nasopharyngeal carcinoma ,medicine ,Automatic segmentation ,Segmentation ,Artificial intelligence ,Cluster analysis ,business - Abstract
The nasopharyngeal carcinoma (NPC) called also Cavum cancer becomes a public health problem for the Maghreb countries and Southeast Asia. The detection of this cancer could be carried out from computed tomography (CT) scans. In this context, we proposed two approaches based on image clustering to locate affected tissues by the Cavum cancer. These approaches are based respectively on E-M and Otsu segmentation. Compared to the physician manual contouring, our automatic detection proves that the detection of the cancer while using the Otsu clustering in terms of precision, recall and F-measure is more efficient than E-M. Then, we merged the results of these two methods by using the AND and the OR logical operators. The AND fusion yields to an increase of the precision while the OR fusion raises the recall. However, the detection of the NPC using Otsu remain the best solution in terms of F-Measure. Compared to previous studies that provide a surface analysis of the NPC, our approach provides a 3D estimation of this tumour ensuring a better analysis of the patient folder.
- Published
- 2020
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