Real-time auto-segmentation of the ureter in video sequences of gynaecological laparoscopic surgery

Zhixiang Wang, Chongdong Liu, Zhen Zhang, Yupeng Deng, Meizhu Xiao, Zhiqiang Zhang, Andre Dekker, Shuzhen Wang, Yujiang Liu, Lin Xue Qian, Zhenyu Zhang, Alberto Traverso*, Ying Feng*

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

1 Downloads (Pure)

Abstract

Background: Ureteral injury is common during gynaecological laparoscopic surgery. Real-time auto-segmentation can assist gynaecologists in identifying the ureter and reduce intraoperative injury risk. Methods: A deep learning segmentation model was crafted for ureter recognition in surgical videos, utilising 3368 frames from 11 laparoscopic surgeries. Class activation maps enhanced the model's interpretability, showing its areas. The model's clinical relevance was validated through an End-User Turing test and verified by three gynaecological surgeons. Results: The model registered a Dice score of 0.86, a Hausdorff 95 distance of 22.60, and processed images in 0.008 s on average. In complex surgeries, it pinpointed the ureter's position in real-time. Fifty five surgeons across eight institutions found the model's accuracy, specificity, and sensitivity comparable to human performance. Yet, artificial intelligence experience influenced some subjective ratings. Conclusions: The model offers precise real-time ureter segmentation in laparoscopic surgery and can be a significant tool for gynaecologists to mitigate ureteral injuries.
Original languageEnglish
Article numbere2604
Number of pages8
JournalInternational Journal of Medical Robotics and Computer Assisted Surgery
Volume20
Issue number1
Early online date19 Dec 2023
DOIs
Publication statusPublished - Feb 2024

Keywords

  • gynaecological laparoscopic surgery
  • segmentation
  • surgical video
  • ureter

Cite this