PA-ResSeg: A Phase Attention Residual Network for Liver Tumor Segmentation from Multi-phase CT Images
Yingying Xu, Ming Cai, Lanfen Lin, Yue Zhang, Hongjie Hu, Zhiyi Peng,, Qiaowei Zhang, Qingqing Chen, Xiongwei Mao, Yutaro Iwamoto, Xian-Hua Han,, Yen-Wei Chen, Ruofeng Tong

TL;DR
This paper introduces PA-ResSeg, a novel neural network that leverages phase attention mechanisms to improve liver tumor segmentation from multi-phase CT images, demonstrating high accuracy and robustness across datasets.
Contribution
The paper proposes a phase attention residual network with intra- and inter-phase attention modules and a multi-scale fusion architecture for enhanced multi-phase feature modeling.
Findings
Achieved a dice per case (DPC) of 0.77 on MPCT-FLLs
Attained a DPC of 0.829 on another dataset
Demonstrated robustness and generalization across datasets
Abstract
In this paper, we propose a phase attention residual network (PA-ResSeg) to model multi-phase features for accurate liver tumor segmentation, in which a phase attention (PA) is newly proposed to additionally exploit the images of arterial (ART) phase to facilitate the segmentation of portal venous (PV) phase. The PA block consists of an intra-phase attention (Intra-PA) module and an inter-phase attention (Inter-PA) module to capture channel-wise self-dependencies and cross-phase interdependencies, respectively. Thus it enables the network to learn more representative multi-phase features by refining the PV features according to the channel dependencies and recalibrating the ART features based on the learned interdependencies between phases. We propose a PA-based multi-scale fusion (MSF) architecture to embed the PA blocks in the network at multiple levels along the encoding path to fuse…
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