Literature DB >> 31356688

Automatic liver segmentation by integrating fully convolutional networks into active contour models.

Xiaotao Guo1, Lawrence H Schwartz1, Binsheng Zhao1.   

Abstract

PURPOSE: Automatic and accurate three-dimensional (3D) segmentation of liver with severe diseases from computed tomography (CT) images is a challenging task. Fully convolutional networks (FCNs) have emerged as powerful tools for automatic semantic segmentation, with multiple potential applications in medical imaging. However, the use of a large receptive field and multiple pooling layers in the network leads to poor localization around object boundaries. The network usually makes pixel-wise prediction independently, making it difficult to respect local label consistency and enforce the smoothness of the object boundary.
METHODS: We have developed an automatic liver segmentation method based on a novel framework that integrates fully convolutional network predictions into active contour models (ACM). We use only a single network architecture to generate a pixel label map containing spatial regional information (foreground and background) as well as layered boundary information. We exploit the structured network outcome to define an external constraint force of active contour models. A unique property of the designed force is that both its strength and direction are adaptive to its position and relative distance to the object boundary. The resulting integrated active contour models have the advantages of incorporating both high-level and low-level image information simultaneously, while enforcing the smoothness of the contour. Because the external constraint force can push the evolving contour to the liver boundary and exists everywhere in the image domain, it allows us to place the initial contour far away from the liver boundary. It potentially allows us to control the evolution of the contour in order to preserve the topology of the liver.
RESULTS: We have trained and evaluated our model on 73 liver CT scans from a clinic study. The integrated ACM model yields mean dice coefficients (DICE) 95.8 ± 1.4 (%). Without further fine-tuning the network weights for two independent datasets, it yields mean DICE 96.2 ± 0.9 (%) for the SLIVER07 training dataset, and mean DICE 94.3 ± 2.7 (%) for the LiTS training dataset. In comparison with FCN alone model, the integrated ACM model yields improvements in terms of surface distance and DICE values for almost all the cases. Furthermore, the initialization of the active contour can be very far away from the liver boundary.
CONCLUSIONS: Experimental results for segmenting livers (with severe diseases on CT images resulting in shape and density abnormalities) have revealed that our proposed model improves segmentation results in comparison with FCN alone. Without further fine-tuning the network weights for two independent datasets, the model is capable of handling image variations from different datasets due to its inherent deformable nature. It is relatively easy to integrate more advanced (either existing or future) FCN architecture into our framework to further improve the segmentation performance.
© 2019 American Association of Physicists in Medicine.

Entities:  

Keywords:  active contour model; convolutional network; deep learning; fully convolutional network; liver segmentation

Mesh:

Year:  2019        PMID: 31356688     DOI: 10.1002/mp.13735

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  6 in total

Review 1.  Radiomics: a primer on high-throughput image phenotyping.

Authors:  Kyle J Lafata; Yuqi Wang; Brandon Konkel; Fang-Fang Yin; Mustafa R Bashir
Journal:  Abdom Radiol (NY)       Date:  2021-08-25

2.  Practical utility of liver segmentation methods in clinical surgeries and interventions.

Authors:  Mohammed Yusuf Ansari; Alhusain Abdalla; Mohammed Yaqoob Ansari; Mohammed Ishaq Ansari; Byanne Malluhi; Snigdha Mohanty; Subhashree Mishra; Sudhansu Sekhar Singh; Julien Abinahed; Abdulla Al-Ansari; Shidin Balakrishnan; Sarada Prasad Dakua
Journal:  BMC Med Imaging       Date:  2022-05-24       Impact factor: 2.795

3.  Liver segmentation in CT imaging with enhanced mask region-based convolutional neural networks.

Authors:  Xiaowen Chen; Xiaoqin Wei; Mingyue Tang; Aimin Liu; Ce Lai; Yuanzhong Zhu; Wenjing He
Journal:  Ann Transl Med       Date:  2021-12

4.  Three-Dimensional Liver Image Segmentation Using Generative Adversarial Networks Based on Feature Restoration.

Authors:  Runnan He; Shiqi Xu; Yashu Liu; Qince Li; Yang Liu; Na Zhao; Yongfeng Yuan; Henggui Zhang
Journal:  Front Med (Lausanne)       Date:  2022-01-07

5.  Uncontrolled Confounders May Lead to False or Overvalued Radiomics Signature: A Proof of Concept Using Survival Analysis in a Multicenter Cohort of Kidney Cancer.

Authors:  Lin Lu; Firas S Ahmed; Oguz Akin; Lyndon Luk; Xiaotao Guo; Hao Yang; Jin Yoon; A Aari Hakimi; Lawrence H Schwartz; Binsheng Zhao
Journal:  Front Oncol       Date:  2021-05-27       Impact factor: 6.244

6.  Automatic Liver Segmentation in CT Images with Enhanced GAN and Mask Region-Based CNN Architectures.

Authors:  Xiaoqin Wei; Xiaowen Chen; Ce Lai; Yuanzhong Zhu; Hanfeng Yang; Yong Du
Journal:  Biomed Res Int       Date:  2021-12-16       Impact factor: 3.411

  6 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.