SAGES consensus recommendations on an annotation framework for surgical video

Background The growing interest in analysis of surgical video through machine learning has led to increased research efforts; however, common methods of annotating video data are lacking. There is a need to establish recommendations on the annotation of surgical video data to enable assessment of al...

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Veröffentlicht in:Surgical endoscopy 2021-09, Vol.35 (9), p.4918-4929
Hauptverfasser: Meireles, Ozanan R., Rosman, Guy, Altieri, Maria S., Carin, Lawrence, Hager, Gregory, Madani, Amin, Padoy, Nicolas, Pugh, Carla M., Sylla, Patricia, Ward, Thomas M., Hashimoto, Daniel A.
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Sprache:eng
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Zusammenfassung:Background The growing interest in analysis of surgical video through machine learning has led to increased research efforts; however, common methods of annotating video data are lacking. There is a need to establish recommendations on the annotation of surgical video data to enable assessment of algorithms and multi-institutional collaboration. Methods Four working groups were formed from a pool of participants that included clinicians, engineers, and data scientists. The working groups were focused on four themes: (1) temporal models, (2) actions and tasks, (3) tissue characteristics and general anatomy, and (4) software and data structure. A modified Delphi process was utilized to create a consensus survey based on suggested recommendations from each of the working groups. Results After three Delphi rounds, consensus was reached on recommendations for annotation within each of these domains. A hierarchy for annotation of temporal events in surgery was established. Conclusions While additional work remains to achieve accepted standards for video annotation in surgery, the consensus recommendations on a general framework for annotation presented here lay the foundation for standardization. This type of framework is critical to enabling diverse datasets, performance benchmarks, and collaboration.
ISSN:0930-2794
1432-2218
DOI:10.1007/s00464-021-08578-9