Literature DB >> 33676099

Weakly-Supervised teacher-Student network for liver tumor segmentation from non-enhanced images.

Dong Zhang1, Bo Chen2, Jaron Chong3, Shuo Li4.   

Abstract

Accurate liver tumor segmentation without contrast agents (non-enhanced images) avoids the contrast-agent-associated time-consuming and high risk, which offers radiologists quick and safe assistance to diagnose and treat the liver tumor. However, without contrast agents enhancing, the tumor in liver images presents low contrast and even invisible to naked eyes. Thus the liver tumor segmentation from non-enhanced images is quite challenging. We propose a Weakly-Supervised Teacher-Student network (WSTS) to address the liver tumor segmentation in non-enhanced images by leveraging additional box-level-labeled data (labeled with a tumor bounding-box). WSTS deploys a weakly-supervised teacher-student framework (TCH-ST), namely, a Teacher Module learns to detect and segment the tumor in enhanced images during training, which facilitates a Student Module to detect and segment the tumor in non-enhanced images independently during testing. To detect the tumor accurately, the WSTS proposes a Dual-strategy DRL (DDRL), which develops two tumor detection strategies by creatively introducing a relative-entropy bias in the DRL. To accurately predict a tumor mask for the box-level-labeled enhanced image and thus improve tumor segmentation in non-enhanced images, the WSTS proposes an Uncertainty-Sifting Self-Ensembling (USSE). The USSE exploits the weakly-labeled data with self-ensembling and evaluates the prediction reliability with a newly-designed Multi-scale Uncertainty-estimation. WSTS is validated with a 2D MRI dataset, where the experiment achieves 83.11% of Dice and 85.12% of Recall in 50 patient testing data after training by 200 patient data (half amount data is box-level-labeled). Such a great result illustrates the competence of WSTS to segment the liver tumor from non-enhanced images. Thus, WSTS has excellent potential to assist radiologists by liver tumor segmentation without contrast-agents.
Copyright © 2021 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Deep reinforcement learning; Liver tumor segmentation; Self-ensembling; Teacher-student; Uncertainty-estimation

Year:  2021        PMID: 33676099     DOI: 10.1016/j.media.2021.102005

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  2 in total

1.  Edge Constraint and Location Mapping for Liver Tumor Segmentation from Nonenhanced Images.

Authors:  Jina Zhang; Shichao Luo; Yan Qiang; Yuling Tian; Xiaojiao Xiao; Keqin Li; Xingxu Li
Journal:  Comput Math Methods Med       Date:  2022-03-09       Impact factor: 2.238

2.  Teacher-student approach for lung tumor segmentation from mixed-supervised datasets.

Authors:  Vemund Fredriksen; Svein Ole M Sevle; André Pedersen; Thomas Langø; Gabriel Kiss; Frank Lindseth
Journal:  PLoS One       Date:  2022-04-05       Impact factor: 3.240

  2 in total

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