HOMEPRODUCTSCOMPANYCONTACTFAQResearchDictionaryPharmaSign Up FREE or Login

HRU-Net: A high-resolution convolutional neural network for esophageal cancer radiotherapy target segmentation.

AbstractBACKGROUND AND OBJECTIVE:
The effective segmentation of esophageal squamous carcinoma lesions in CT scans is significant for auxiliary diagnosis and treatment. However, accurate lesion segmentation is still a challenging task due to the irregular form of the esophagus and small size, the inconsistency of spatio-temporal structure, and low contrast of esophagus and its peripheral tissues in medical images. The objective of this study is to improve the segmentation effect of esophageal squamous cell carcinoma lesions.
METHODS:
It is critical for a segmentation network to effectively extract 3D discriminative features to distinguish esophageal cancers from some visually closed adjacent esophageal tissues and organs. In this work, an efficient HRU-Net architecture (High-Resolution U-Net) was exploited for esophageal cancer and esophageal carcinoma segmentation in CT slices. Based on the idea of localization first and segmentation later, the HRU-Net locates the esophageal region before segmentation. In addition, an Resolution Fusion Module (RFM) was designed to integrate the information of adjacent resolution feature maps to obtain strong semantic information, as well as preserve the high-resolution features.
RESULTS:
Compared with the other five typical methods, the devised HRU-Net is capable of generating superior segmentation results.
CONCLUSIONS:
Our proposed HRU-NET improves the accuracy of segmentation for squamous esophageal cancer. Compared to other models, our model performs the best. The designed method may improve the efficiency of clinical diagnosis of esophageal squamous cell carcinoma lesions.
AuthorsMuwei Jian, Chen Tao, Ronghua Wu, Haoran Zhang, Xiaoguang Li, Rui Wang, Yanlei Wang, Lizhi Peng, Jian Zhu
JournalComputer methods and programs in biomedicine (Comput Methods Programs Biomed) Vol. 250 Pg. 108177 (Jun 2024) ISSN: 1872-7565 [Electronic] Ireland
PMID38648704 (Publication Type: Journal Article)
CopyrightCopyright © 2024 Elsevier B.V. All rights reserved.
Topics
  • Humans
  • Esophageal Neoplasms (diagnostic imaging, radiotherapy)
  • Neural Networks, Computer
  • Tomography, X-Ray Computed (methods)
  • Esophageal Squamous Cell Carcinoma (diagnostic imaging, radiotherapy)
  • Algorithms
  • Image Processing, Computer-Assisted (methods)
  • Imaging, Three-Dimensional (methods)

Join CureHunter, for free Research Interface BASIC access!

Take advantage of free CureHunter research engine access to explore the best drug and treatment options for any disease. Find out why thousands of doctors, pharma researchers and patient activists around the world use CureHunter every day.
Realize the full power of the drug-disease research graph!


Choose Username:
Email:
Password:
Verify Password:
Enter Code Shown: