Automated catheter segmentation and tip detection in cerebral angiography with topology-aware geometric deep learning.

Journal: Journal of neurointerventional surgery
Published Date:

Abstract

BACKGROUND: Visual perception of catheters and guidewires on x-ray fluoroscopy is essential for neurointervention. Endovascular robots with teleoperation capabilities are being developed, but they cannot 'see' intravascular devices, which precludes artificial intelligence (AI) augmentation that could improve precision and autonomy. Deep learning has not been explored for neurointervention and prior works in cardiovascular scenarios are inadequate as they only segment device tips, while neurointervention requires segmentation of the entire structure due to coaxial devices. Therefore, this study develops an automatic and accurate image-based catheter segmentation method in cerebral angiography using deep learning.

Authors

  • Rahul Ghosh
    Systems Medicine and Bioengineering, Houston Methodist Cancer Center, Houston Methodist Hospital and Department of Radiology, Weill Cornell Medicine, 6670 Bertner Ave, Houston, TX 77030, USA; MD/PhD Program, Texas A&M University College of Medicine, 8447 Riverside Parkway, Suite 1002, Bryan, TX 77807, USA.
  • Kelvin Wong
    T.T. and W.F. Chao Center for BRAIN & Houston Methodist Cancer Center, Houston Methodist Hospital, Houston, Texas 77030, USA.
  • Yi Jonathan Zhang
    Neurological Surgery, Queen's Medical Center, Honolulu, Hawaii, USA.
  • Gavin W Britz
    Methodist Neurological Institute, Houston, Texas, USA.
  • Stephen T C Wong
    Translational Biophotonics Laboratory, Department of Systems Medicine and Bioengineering, Houston Me, United States.