Hyper-Pairing Network for Multi-Phase Pancreatic Ductal Adenocarcinoma Segmentation (1909.00906v1)
Abstract: Pancreatic ductal adenocarcinoma (PDAC) is one of the most lethal cancers with an overall five-year survival rate of 8%. Due to subtle texture changes of PDAC, pancreatic dual-phase imaging is recommended for better diagnosis of pancreatic disease. In this study, we aim at enhancing PDAC automatic segmentation by integrating multi-phase information (i.e., arterial phase and venous phase). To this end, we present Hyper-Pairing Network (HPN), a 3D fully convolution neural network which effectively integrates information from different phases. The proposed approach consists of a dual path network where the two parallel streams are interconnected with hyper-connections for intensive information exchange. Additionally, a pairing loss is added to encourage the commonality between high-level feature representations of different phases. Compared to prior arts which use single phase data, HPN reports a significant improvement up to 7.73% (from 56.21% to 63.94%) in terms of DSC.
- Yuyin Zhou (92 papers)
- Yingwei Li (31 papers)
- Zhishuai Zhang (27 papers)
- Yan Wang (734 papers)
- Angtian Wang (28 papers)
- Elliot Fishman (4 papers)
- Alan Yuille (295 papers)
- Seyoun Park (5 papers)