Print Email Facebook Twitter Surgical phase modelling in minimal invasive surgery Title Surgical phase modelling in minimal invasive surgery Author Meeuwsen, F.C. (TU Delft Medical Instruments & Bio-Inspired Technology) van Luyn, F. (Student TU Delft) Blikkendaal, M. D. (Leiden University Medical Center) Jansen, F.W. (Leiden University Medical Center) van den Dobbelsteen, J.J. (TU Delft Medical Instruments & Bio-Inspired Technology) Date 2018 Abstract Background: Surgical Process Modelling (SPM) offers the possibility to automatically gain insight in the surgical workflow, with the potential to improve OR logistics and surgical care. Most studies have focussed on phase recognition modelling of the laparoscopic cholecystectomy, because of its standard and frequent execution. To demonstrate the broad applicability of SPM, more diverse and complex procedures need to be studied. The aim of this study is to investigate the accuracy in which we can recognise and extract surgical phases in laparoscopic hysterectomies (LHs) with inherent variability in procedure time. To show the applicability of the approach, the model was used to automatically predict surgical end-times. Methods: A dataset of 40 video-recorded LHs was manually annotated for instrument use and divided into ten surgical phases. The use of instruments provided the feature input for building a Random Forest surgical phase recognition model that was trained to automatically recognise surgical phases. Tenfold cross-validation was performed to optimise the model for predicting the surgical end-time throughout the procedure. Results: Average surgery time is 128 ± 27 min. Large variability within specific phases is seen. Overall, the Random Forest model reaches an accuracy of 77% recognising the current phase in the procedure. Six of the phases are predicted accurately over 80% of their duration. When predicting the surgical end-time, on average an error of 16 ± 13 min is reached throughout the procedure. Conclusions: This study demonstrates an intra-operative approach to recognise surgical phases in 40 laparoscopic hysterectomy cases based on instrument usage data. The model is capable of automatic detection of surgical phases for generation of a solid prediction of the surgical end-time. Subject HysterectomyInstrument trackingPatient safetyPhase recognitionWorkflow To reference this document use: http://resolver.tudelft.nl/uuid:7ea6b9d4-9ed2-4371-b7cb-2c6926a732a5 DOI https://doi.org/10.1007/s00464-018-6417-4 ISSN 0930-2794 Source Surgical Endoscopy: surgical and interventional techniques (online), 33 (2019) (5), 1426-1432 Part of collection Institutional Repository Document type journal article Rights © 2018 F.C. Meeuwsen, F. van Luyn, M. D. Blikkendaal, F.W. Jansen, J.J. van den Dobbelsteen Files PDF Meeuwsen2018_Article_Surg ... Minima.pdf 835.56 KB Close viewer /islandora/object/uuid:7ea6b9d4-9ed2-4371-b7cb-2c6926a732a5/datastream/OBJ/view