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

被引:3
|
作者
Deol, Ekamjit S. [1 ]
Tollefson, Matthew K. [1 ]
Antolin, Alenka [2 ]
Zohar, Maya [2 ]
Bar, Omri [2 ]
Ben-Ayoun, Danielle [2 ]
Mynderse, Lance A. [1 ]
Lomas, Derek J. [1 ]
Avant, Ross A. [1 ]
Miller, Adam R. [1 ]
Elliott, Daniel S. [1 ]
Boorjian, Stephen A. [1 ]
Wolf, Tamir [2 ]
Asselmann, Dotan [2 ]
Khanna, Abhinav [1 ]
机构
[1] Mayo Clin, Dept Urol, Rochester, MN 55902 USA
[2] theator io, Palo Alto, CA USA
来源
FRONTIERS IN ARTIFICIAL INTELLIGENCE | 2024年 / 7卷
关键词
computer vision; automated surgery; surgical intelligence; surgical step recognition; artificial intelligence; endourology; computer-assisted surgery; urology; RADICAL PROSTATECTOMY;
D O I
10.3389/frai.2024.1375482
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Objective Automated 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 methods Retrospective 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.Results A 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%).Conclusion We 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.
引用
收藏
页数:8
相关论文
共 50 条
  • [41] Comparison between the effects of deep and moderate neuromuscular blockade during transurethral resection of bladder tumor on endoscopic surgical condition and recovery profile: a prospective, randomized, and controlled trial
    Koo, C. H.
    Chung, S. H.
    Kim, B. G.
    Min, B. H.
    Lee, S. C.
    Oh, A. Y.
    Jeon, Y. T.
    Ryu, J. H.
    WORLD JOURNAL OF UROLOGY, 2019, 37 (02) : 359 - 365
  • [42] Fully Automated Pancreatic Cancer Tumor Analysis in CT Images Using Artificial Intelligence and Deep Learning Neural Networks
    Asadpour, V.
    Parker, R. A.
    Sampson, S. J.
    Chen, W.
    Wu, B. U.
    PANCREAS, 2019, 48 (10) : 1404 - 1405
  • [43] Artificial Intelligence in Medical Education: Best Practices Using Machine Learning to Assess Surgical Expertise in Virtual Reality Simulation
    Winkler-Schwartz, Alexander
    Bissonnette, Vincent
    Mirchi, Nykan
    Ponnudurai, Nirros
    Yilmaz, Recai
    Ledwos, Nicole
    Siyar, Samaneh
    Azarnoush, Homed
    Karlik, Bekir
    Del Maestro, Rolando F.
    JOURNAL OF SURGICAL EDUCATION, 2019, 76 (06) : 1681 - 1690
  • [45] A novel high accuracy model for automatic surgical workflow recognition using artificial intelligence in laparoscopic totally extraperitoneal inguinal hernia repair (TEP)
    Monica Ortenzi
    Judith Rapoport Ferman
    Alenka Antolin
    Omri Bar
    Maya Zohar
    Ori Perry
    Dotan Asselmann
    Tamir Wolf
    Surgical Endoscopy, 2023, 37 (11) : 8818 - 8828
  • [46] A novel high accuracy model for automatic surgical workflow recognition using artificial intelligence in laparoscopic totally extraperitoneal inguinal hernia repair (TEP)
    Ortenzi, Monica
    Ferman, Judith Rapoport
    Antolin, Alenka
    Bar, Omri
    Zohar, Maya
    Perry, Ori
    Asselmann, Dotan
    Wolf, Tamir
    SURGICAL ENDOSCOPY AND OTHER INTERVENTIONAL TECHNIQUES, 2023, 37 (11): : 8818 - 8828
  • [47] ADVANCES IN STANDARDIZED AND TRANSCRIPTIONIST-FREE SURGICAL PATHOLOGY REPORTING USING INTEGRATED ARTIFICIAL-INTELLIGENCE VOICE RECOGNITION AND LABORATORY INFORMATION-SYSTEMS
    TEPLITZ, C
    CIPRIANI, M
    APONTECIPRIANI, S
    BASS, H
    TIHAN, T
    CASHMAN, H
    LABORATORY INVESTIGATION, 1993, 68 (01) : A143 - A143
  • [48] A new model using artificial intelligence to predict recurrence after surgical resection of stage I-II non-small cell lung cancer.
    Lui, Natalie
    Wei, Nien
    Trope, Winston
    Nesbit, Shannon
    Bhandari, Prasha
    Lee, Chin-Hui
    Hu, Hu
    Guo, H. Henry
    Liou, Douglas Z.
    Shrager, Joseph B.
    Backhus, Leah Monique
    Berry, Mark F.
    Yang, Eric
    JOURNAL OF CLINICAL ONCOLOGY, 2021, 39 (15)
  • [49] Artificial intelligence for surgical safety during laparoscopic gastrectomy for gastric cancer: Indication of anatomical landmarks related to postoperative pancreatic fistula using deep learning
    Aoyama, Yoshimasa
    Matsunobu, Yusuke
    Etoh, Tsuyoshi
    Suzuki, Kosuke
    Fujita, Shunsuke
    Aiba, Takayuki
    Fujishima, Hajime
    Empuku, Shinichiro
    Kono, Yohei
    Endo, Yuichi
    Ueda, Yoshitake
    Shiroshita, Hidefumi
    Kamiyama, Toshiya
    Sugita, Takemasa
    Morishima, Kenichi
    Ebe, Kohei
    Tokuyasu, Tatsushi
    Inomata, Masafumi
    SURGICAL ENDOSCOPY AND OTHER INTERVENTIONAL TECHNIQUES, 2024, 38 (10): : 5601 - 5612
  • [50] Automated imaging-based stratification of early-stage lung cancer patients prior to receiving surgical resection using deep learning applied to CTs.
    Torres, Felipe Soares
    Akbar, Shazia
    Raman, Srinivas
    Yasufuku, Kazuhiro
    Baldauf-Lenschen, Felix
    Leighl, Natasha B.
    JOURNAL OF CLINICAL ONCOLOGY, 2021, 39 (15)