DOI: 10.18466/cbayarfbe.1730380 ISSN: 1305-130X

A Comparative Study of 2D and 3D U-Net-Based Architectures for Pancreas and Tumor Segmentation in CT Imaging

İbrahim Şen, Azer Çelikten, Ece Bingöl, Muhammed Kerem Demir, Andac Akpulat, Semih Demirel, Abdulkadir Budak, Hakan Karataş
Pancreatic cancer ranks among the deadliest forms of cancer, largely due to its asymptomatic progression, late-stage diagnosis, and the pancreas’s deep-seated and anatomically complex location within the abdominal cavity. These factors collectively prevent early detection, which is critical for improving patient outcomes. Deep learning-based segmentation models, particularly those based on the U-Net architecture, have demonstrated strong potential for the automatic identification of pancreas and pancreatic tumors in computed tomography (CT) images. This study presents a comparative analysis of 2D and 3D U-Net architectures for the segmentation of the pancreas and its tumors. The results show that the 3D Res-U-Net achieved the best performance, with a Dice score of 0.81 for pancreas segmentation and 0.51 for tumor segmentation, outperforming both the 2D U-Net and the 3D U-Net. Additionally, inference time analysis for real-time clinical settings showed that the 2D U-Net enables the fastest predictions, whereas the 3D U-Net and 3D Res-U-Net require significantly higher computation, underscoring key trade-offs for clinical deployment. These findings offer valuable insights into model selection and optimization strategies for real-world clinical applications. The findings underscore the feasibility of developing efficient deep learning-based systems to support early diagnosis and personalized treatment planning for pancreatic cancer.

More from our Archive