Decoupled Pyramid Correlation Network for Liver Tumor Segmentation from
CT images
- URL: http://arxiv.org/abs/2205.13199v1
- Date: Thu, 26 May 2022 07:31:29 GMT
- Title: Decoupled Pyramid Correlation Network for Liver Tumor Segmentation from
CT images
- Authors: Yao Zhang, Jiawei Yang, Yang Liu, Jiang Tian, Siyun Wang, Cheng Zhong,
Zhongchao Shi, Yang Zhang, Zhiqiang He
- Abstract summary: We propose a Decoupled Pyramid Correlation Network (DPC-Net)
It exploits attention mechanisms to fully leverage both low and high-level features embedded in FCN to segment liver tumor.
It achieves a competitive results with a DSC of 96.2% and an ASSD of 1.636 mm for liver segmentation.
- Score: 22.128902125820193
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Purpose: Automated liver tumor segmentation from Computed Tomography (CT)
images is a necessary prerequisite in the interventions of hepatic
abnormalities and surgery planning. However, accurate liver tumor segmentation
remains challenging due to the large variability of tumor sizes and
inhomogeneous texture. Recent advances based on Fully Convolutional Network
(FCN) for medical image segmentation drew on the success of learning
discriminative pyramid features. In this paper, we propose a Decoupled Pyramid
Correlation Network (DPC-Net) that exploits attention mechanisms to fully
leverage both low- and high-level features embedded in FCN to segment liver
tumor. Methods: We first design a powerful Pyramid Feature Encoder (PFE) to
extract multi-level features from input images. Then we decouple the
characteristics of features concerning spatial dimension (i.e., height, width,
depth) and semantic dimension (i.e., channel). On top of that, we present two
types of attention modules, Spatial Correlation (SpaCor) and Semantic
Correlation (SemCor) modules, to recursively measure the correlation of
multi-level features. The former selectively emphasizes global semantic
information in low-level features with the guidance of high-level ones. The
latter adaptively enhance spatial details in high-level features with the
guidance of low-level ones. Results: We evaluate the DPC-Net on MICCAI 2017
LiTS Liver Tumor Segmentation (LiTS) challenge dataset. Dice Similarity
Coefficient (DSC) and Average Symmetric Surface Distance (ASSD) are employed
for evaluation. The proposed method obtains a DSC of 76.4% and an ASSD of 0.838
mm for liver tumor segmentation, outperforming the state-of-the-art methods. It
also achieves a competitive results with a DSC of 96.0% and an ASSD of 1.636 mm
for liver segmentation.
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