| Literature DB >> 33846356 |
Lena Maier-Hein1, Martin Wagner2, Hannes G Kenngott2, Beat P Müller-Stich3, Tobias Ross4,5, Annika Reinke4,5, Sebastian Bodenstedt6, Peter M Full5,7, Hellena Hempe4, Diana Mindroc-Filimon4, Patrick Scholz4,8, Thuy Nuong Tran4, Pierangela Bruno4,9, Anna Kisilenko2, Benjamin Müller2, Tornike Davitashvili2, Manuela Capek2, Minu D Tizabi4, Matthias Eisenmann4, Tim J Adler4, Janek Gröhl4, Melanie Schellenberg4, Silvia Seidlitz4,8, T Y Emmy Lai7, Bünyamin Pekdemir4, Veith Roethlingshoefer10, Fabian Both10,11, Sebastian Bittel10,12, Marc Mengler10, Lars Mündermann13, Martin Apitz2, Annette Kopp-Schneider14, Stefanie Speidel6,15, Felix Nickel2, Pascal Probst2.
Abstract
Image-based tracking of medical instruments is an integral part of surgical data science applications. Previous research has addressed the tasks of detecting, segmenting and tracking medical instruments based on laparoscopic video data. However, the proposed methods still tend to fail when applied to challenging images and do not generalize well to data they have not been trained on. This paper introduces the Heidelberg Colorectal (HeiCo) data set - the first publicly available data set enabling comprehensive benchmarking of medical instrument detection and segmentation algorithms with a specific emphasis on method robustness and generalization capabilities. Our data set comprises 30 laparoscopic videos and corresponding sensor data from medical devices in the operating room for three different types of laparoscopic surgery. Annotations include surgical phase labels for all video frames as well as information on instrument presence and corresponding instance-wise segmentation masks for surgical instruments (if any) in more than 10,000 individual frames. The data has successfully been used to organize international competitions within the Endoscopic Vision Challenges 2017 and 2019.Entities:
Year: 2021 PMID: 33846356 DOI: 10.1038/s41597-021-00882-2
Source DB: PubMed Journal: Sci Data ISSN: 2052-4463 Impact factor: 6.444