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Active learning for extracting surgomic features in robot-assisted minimally invasive esophagectomy: a prospective annotation study.

Johanna M BrandenburgAlexander C JenkeAntonia SternMarie T J DaumAndré SchulzeRayan YounisPhilipp PetrynowskiTornike DavitashviliVincent VanatNithya BhaskerSophia SchneiderLars MündermannAnnika ReinkeFiona R KolbingerVanessa JörnsFleur Fritz-KebedeMartin DugasLena Maier-HeinRosa KlotzMarius DistlerJürgen WeitzBeat P Müller-StichStefanie SpeidelSebastian BodenstedtMartin Wagner
Published in: Surgical endoscopy (2023)
We presented ten surgomic features relevant for bleeding events in esophageal surgery automatically extracted from surgical video using ML. AL showed the potential to reduce annotation effort while keeping ML performance high for selected features. The source code and the trained models are published open source.
Keyphrases
  • minimally invasive
  • robot assisted
  • rna seq
  • randomized controlled trial
  • risk assessment
  • systematic review
  • coronary artery disease
  • climate change
  • high intensity