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16 - 20 February 2025
San Diego, California, US
Conference 13407 > Paper 13407-63
Paper 13407-63

PanNet: a feature-based attention aggregation model for segmenting pancreatic ductal adenocarcinoma on contrast-enhanced CT images of the abdomen

19 February 2025 • 5:30 PM - 7:00 PM PST | Golden State Ballroom

Abstract

Pancreatic ductal adenocarcinoma (PDAC) is one of the most lethal forms of cancer with a 5-year survival rate of only 8%. One of the primary reasons for the low survival rate is the late detection of the PDAC cancer. This work focuses on the segmentation of PDAC for improved detection of pancreatic masses which will ultimately promote diagnosis during earlier stages of the disease. We propose a novel automatic segmentation model, PanNet which uses multi-level skip connection along with novel feature-based attention aggregation (FAA) block to improve the accuracy of the PDAC detection. The FAA block improves the interpolation power of the model in the decoder blocks, thereby reducing false positive pixels in the predicted tumor masks. The pixel-wise attention algorithm in the FAA block is applied across all channels in the 3D feature vectors obtained from individual decoder blocks. This leads to a substantial improvement of up to 7.3% in Dice Score (DSC) score on two datasets, each containing a test set of patients with early onset of PDAC. This aggregates to an improvement in the pixels of tumor volume prediction by at most 60.2% in comparison to state-ofthe-art (SOTA) pancreas segmentation models across both the datasets. The proposed PanNet can be utilized for early detection of PDAC cancer, given its consistent and enhanced segmentation performance demonstrated across multiple datasets in this paper.

Presenter

Debojyoti Pal
Washington Univ. in St. Louis (United States)
I am a second year PhD student in the Imaging Science Program of Washington University in St Louis. I am working with Dr Kooresh Shoghi towards developing a pipeline to detect Pancreatic Ductal Adeno Carcinoma tumor. My research interest is integrating Deep Learning and Artificial Intelligence Algorithm in complex clinical problems/situations to streamline and improve medical diagnosis and treatment.
Application tracks: AI/ML
Presenter/Author
Debojyoti Pal
Washington Univ. in St. Louis (United States)
Author
Washington Univ. in St. Louis (United States)
Author
Washington Univ. in St. Louis (United States)
Author
Kooresh Shoghi
Washington Univ. in St. Louis (United States)