Abstract
Purpose
Laparoscopic cholecystectomy is a very common minimally invasive surgical procedure that may be improved by autonomous or cooperative assistance support systems. Model-based surgery with a precise definition of distinct procedural tasks (PT) of the operation was implemented and tested to depict and analyze the process of this procedure.
Methods
Reliability of real-time workflow recognition in laparoscopic cholecystectomy (\(n=10\) cases) was evaluated by continuous sensor-based data acquisition. Ten PTs were defined including begin/end preparation calots’ triangle, clipping/cutting cystic artery and duct, begin/end gallbladder dissection, begin/end hemostasis, gallbladder removal, and end of operation. Data acquisition was achieved with continuous instrument detection, room/table light status, intra-abdominal pressure, table tilt, irrigation/aspiration volume and coagulation/cutting current application. Two independent observers recorded start and endpoint of each step by analysis of the sensor data. The data were cross-checked with laparoscopic video recordings serving as gold standard for PT identification.
Results
Bland–Altman analysis revealed for 95 % of cases a difference of annotation results within the limits of agreement ranging from \(-\)309 s (PT 7) to +368 s (PT 5). Laparoscopic video and sensor data matched to a greater or lesser extent within the different procedural tasks. In the majority of cases, the observer results exceeded those obtained from the laparoscopic video. Empirical knowledge was required to detect phase transit.
Conclusions
A set of sensors used to monitor laparoscopic cholecystectomy procedures was sufficient to enable expert observers to reliably identify each PT. In the future, computer systems may automate the task identification process provided a more robust data inflow is available.
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Acknowledgments
Dres. Kranzfelder, Schneider, Fiolka, Reiser, Wilhelm and Feussner as well as Mr. Koller and Mr. Vogel have no conflicts of interest or financial ties to disclose. This paper was supported in part by DFG project “Single-Port-Technologie für gastroenterologische und viszeralchirurgische endoskopische Interventionen“ (FOR 1321).
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Kranzfelder, M., Schneider, A., Fiolka, A. et al. Reliability of sensor-based real-time workflow recognition in laparoscopic cholecystectomy. Int J CARS 9, 941–948 (2014). https://doi.org/10.1007/s11548-014-0986-z
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DOI: https://doi.org/10.1007/s11548-014-0986-z