Deep Closing: Enhancing Topological Connectivity in Medical Tubular Segmentation.

Journal: IEEE transactions on medical imaging
PMID:

Abstract

Accurately segmenting tubular structures, such as blood vessels or nerves, holds significant clinical implications across various medical applications. However, existing methods often exhibit limitations in achieving satisfactory topological performance, particularly in terms of preserving connectivity. To address this challenge, we propose a novel deep-learning approach, termed Deep Closing, inspired by the well-established classic closing operation. Deep Closing first leverages an AutoEncoder trained in the Masked Image Modeling (MIM) paradigm, enhanced with digital topology knowledge, to effectively learn the inherent shape prior of tubular structures and indicate potential disconnected regions. Subsequently, a Simple Components Erosion module is employed to generate topology-focused outcomes, which refines the preceding segmentation results, ensuring all the generated regions are topologically significant. To evaluate the efficacy of Deep Closing, we conduct comprehensive experiments on 4 datasets: DRIVE, CHASE_DB1, DCA1, and CREMI. The results demonstrate that our approach yields considerable improvements in topological performance compared with existing methods. Furthermore, Deep Closing exhibits the ability to generalize and transfer knowledge from external datasets, showcasing its robustness and adaptability. The code for this paper has been available at: https://github.com/5k5000/DeepClosing.

Authors

  • Qian Wu
    China Electric Power Research Institute, Beijing, China.
  • Yufei Chen
    College of Electronics and Information Engineering, Tongji University, Shanghai 200092, China. Electronic address: yufeichen@tongji.edu.cn.
  • Wei Liu
    Department of Radiation Oncology, Mayo Clinic, Scottsdale, AZ, United States.
  • Xiaodong Yue
    School of Computer Engineering and Science, Shanghai University, Shanghai 200444, China.
  • Xiahai Zhuang
    School of Data Science, Fudan University, Shanghai, China; Fudan-Xinzailing Joint Research Center for Big Data, Fudan University, Shanghai, China. Electronic address: zxh@fudan.edu.cn.