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Automatic surgical phase recognition-based skill assessment in laparoscopic distal gastrectomy using multicenter videos

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Abstract

Background

Gastric surgery involves numerous surgical phases; however, its steps can be clearly defined. Deep learning-based surgical phase recognition can promote stylization of gastric surgery with applications in automatic surgical skill assessment. This study aimed to develop a deep learning-based surgical phase-recognition model using multicenter videos of laparoscopic distal gastrectomy, and examine the feasibility of automatic surgical skill assessment using the developed model.

Methods

Surgical videos from 20 hospitals were used. Laparoscopic distal gastrectomy was defined and annotated into nine phases and a deep learning-based image classification model was developed for phase recognition. We examined whether the developed model’s output, including the number of frames in each phase and the adequacy of the surgical field development during the phase of supra-pancreatic lymphadenectomy, correlated with the manually assigned skill assessment score.

Results

The overall accuracy of phase recognition was 88.8%. Regarding surgical skill assessment based on the number of frames during the phases of lymphadenectomy of the left greater curvature and reconstruction, the number of frames in the high-score group were significantly less than those in the low-score group (829 vs. 1,152, P < 0.01; 1,208 vs. 1,586, P = 0.01, respectively). The output score of the adequacy of the surgical field development, which is the developed model’s output, was significantly higher in the high-score group than that in the low-score group (0.975 vs. 0.970, P = 0.04).

Conclusion

The developed model had high accuracy in phase-recognition tasks and has the potential for application in automatic surgical skill assessment systems.
Title
Automatic surgical phase recognition-based skill assessment in laparoscopic distal gastrectomy using multicenter videos
Authors
Masaru Komatsu
Daichi Kitaguchi
Masahiro Yura
Nobuyoshi Takeshita
Mitsumasa Yoshida
Masayuki Yamaguchi
Hibiki Kondo
Takahiro Kinoshita
Masaaki Ito
Publication date
01-12-2023
Publisher
Springer Nature Singapore
Published in
Gastric Cancer / Issue 1/2024
Print ISSN: 1436-3291
Electronic ISSN: 1436-3305
DOI
https://doi.org/10.1007/s10120-023-01450-w
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Colon cancer illustration/© (M) KATERYNA KON / SCIENCE PHOTO LIBRARY / Getty Images, Human brain illustration/© (M) CHRISTOPH BURGSTEDT / SCIENCE PHOTO LIBRARY / Getty Images