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Journal of Graphics ›› 2023, Vol. 44 ›› Issue (5): 879-889.DOI: 10.11996/JG.j.2095-302X.2023050879

• Image Processing and Computer Vision • Previous Articles     Next Articles

CT image segmentation of lung nodules based on channel residual nested U structure

JIANG Wu-jun1(), ZHI Li-jia1,2,3(), ZHANG Shao-min1,2,3, ZHOU Tao1,3   

  1. 1. School of Computer Science and Engineering, North Minzu University, Yinchuan Ningxia 750021, China
    2. Medical Imaging Center, Ningxia Hui Autonomous Region People's Hospital, Yinchuan Ningxia 750000, China
    3. The Key Laboratory of Images & Graphics Intelligent Processing of State Ethnic Affairs Commission, Yinchuan Ningxia 750021, China
  • Received:2023-05-25 Accepted:2023-08-19 Online:2023-10-31 Published:2023-10-31
  • Contact: ZHI Li-jia (1977-), lecturer, Ph.D. His main research interests cover computer vision, medical image analysis and processing, etc. E-mail:zhilj@nun.edu.cn
  • About author:JIANG Wu-jun (1998-), master student. His main research interests cover computer vision, medical image analysis and processing. E-mail:184611875@qq.com
  • Supported by:
    Ningxia Natural Science Foundation China(2021AAC03198);Ningxia Natural Science Foundation China(2023AAC03263);National Natural Science Foundation of China(61561002);National Natural Science Foundation of China(62062003);Ningxia Medical Imaging Clinical Research Center Innovation Platform Construction Project(2018DPG05006)

Abstract:

Early diagnosis and treatment are pivotal in elevating the chances of lung cancer survival. Early-stage lung cancer often manifests through lung nodules. However, their heterogeneity poses a challenge in their detection of lung nodules via computed tomography, subsequently diminishing the accuracy of segmentation results. To improve the completeness and accuracy of lung nodule segmentation results, a 3D channel residual nested U-network (CR U2Net) was proposed for lung nodule segmentation. The shallow information processing U-structure (SIPU) was proposed to address the challenge of managing the interference of noise information while simultaneously incorporating key lesion details within shallow features. To enhance the interaction across different layers of feature information, and to enrich feature expression and transfer, the Channel Residual structure was introduced in conjunction with the nested U-structure to extract and optimize feature information. Acknowledging the spatial detail information found in shallow features and the semantic abstraction in deep features, the channel extrusion U-structure (CEU) was designed to effectively fuse features at different semantic levels. By integrating the proposed modules into UNet, a lung nodule segmentation model based on nested U-structures was constructed. The proposed model was trained on the Lung Image Database Consortium and Image Database Resource Initiative (LIDC-IDRI) dataset. And chieved the best Dice Similarity Coefficient performance, reaching 83.83%. This outperformed UNet, UNet++, and PCAMNet networks by 3.98%, 1.96%, and 1.26%, respectively. In addition, ablation experiments were conducted to evaluate the structural validity of the proposed CR U2Net, demonstrating that each module within the proposed segmentation algorithm contributes to achieving optimal performance while adhering to acceptable parameter and computational constraints.

Key words: deep neural network, lung nodule segmentation, channel residual structure, nested U structure, channel extrusion module

CLC Number: