Frontiers in Artificial Intelligence (Mar 2024)

Automated surgical step recognition in transurethral bladder tumor resection using artificial intelligence: transfer learning across surgical modalities

  • Ekamjit S. Deol,
  • Matthew K. Tollefson,
  • Alenka Antolin,
  • Maya Zohar,
  • Omri Bar,
  • Danielle Ben-Ayoun,
  • Lance A. Mynderse,
  • Derek J. Lomas,
  • Ross A. Avant,
  • Adam R. Miller,
  • Daniel S. Elliott,
  • Stephen A. Boorjian,
  • Tamir Wolf,
  • Dotan Asselmann,
  • Abhinav Khanna

DOI
https://doi.org/10.3389/frai.2024.1375482
Journal volume & issue
Vol. 7

Abstract

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ObjectiveAutomated surgical step recognition (SSR) using AI has been a catalyst in the “digitization” of surgery. However, progress has been limited to laparoscopy, with relatively few SSR tools in endoscopic surgery. This study aimed to create a SSR model for transurethral resection of bladder tumors (TURBT), leveraging a novel application of transfer learning to reduce video dataset requirements.Materials and methodsRetrospective surgical videos of TURBT were manually annotated with the following steps of surgery: primary endoscopic evaluation, resection of bladder tumor, and surface coagulation. Manually annotated videos were then utilized to train a novel AI computer vision algorithm to perform automated video annotation of TURBT surgical video, utilizing a transfer-learning technique to pre-train on laparoscopic procedures. Accuracy of AI SSR was determined by comparison to human annotations as the reference standard.ResultsA total of 300 full-length TURBT videos (median 23.96 min; IQR 14.13–41.31 min) were manually annotated with sequential steps of surgery. One hundred and seventy-nine videos served as a training dataset for algorithm development, 44 for internal validation, and 77 as a separate test cohort for evaluating algorithm accuracy. Overall accuracy of AI video analysis was 89.6%. Model accuracy was highest for the primary endoscopic evaluation step (98.2%) and lowest for the surface coagulation step (82.7%).ConclusionWe developed a fully automated computer vision algorithm for high-accuracy annotation of TURBT surgical videos. This represents the first application of transfer-learning from laparoscopy-based computer vision models into surgical endoscopy, demonstrating the promise of this approach in adapting to new procedure types.

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