4.6 Article Proceedings Paper

Artificial intelligence prediction of cholecystectomy operative course from automated identification of gallbladder inflammation

Journal

Publisher

SPRINGER
DOI: 10.1007/s00464-022-09009-z

Keywords

Computer Vision; Deep learning; Artificial intelligence; Cholecystectomy

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Funding

  1. Risk Management Foundation of the Harvard Medical Institutions Incorporated (CRICO/RMF) [233456]

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The study found that an AI model can accurately identify the degree of gallbladder inflammation, which has an impact on the intra-operative course. The automated assessment system can be used for optimizing the workflow in the operating room and providing targeted feedback to surgeons and residents, accelerating the acquisition of operative skills.
Background Operative courses of laparoscopic cholecystectomies vary widely due to differing pathologies. Efforts to assess intra-operative difficulty include the Parkland grading scale (PGS), which scores inflammation from the initial view of the gallbladder on a 1-5 scale. We investigated the impact of PGS on intra-operative outcomes, including laparoscopic duration, attainment of the critical view of safety (CVS), and gallbladder injury. We additionally trained an artificial intelligence (AI) model to identify PGS. Methods One surgeon labeled surgical phases, PGS, CVS attainment, and gallbladder injury in 200 cholecystectomy videos. We used multilevel Bayesian regression models to analyze the PGS's effect on intra-operative outcomes. We trained AI models to identify PGS from an initial view of the gallbladder and compared model performance to annotations by a second surgeon. Results Slightly inflamed gallbladders (PGS-2) minimally increased duration, adding 2.7 [95% compatibility interval (CI) 0.3-7.0] minutes to an operation. This contrasted with maximally inflamed gallbladders (PGS-5), where on average 16.9 (95% CI 4.4-33.9) minutes were added, with 31.3 (95% CI 8.0-67.5) minutes added for the most affected surgeon. Inadvertent gallbladder injury occurred in 25% of cases, with a minimal increase in gallbladder injury observed with added inflammation. However, up to a 28% (95% CI - 2, 63) increase in probability of a gallbladder hole during PGS-5 cases was observed for some surgeons. Inflammation had no substantial effect on whether or not a surgeon attained the CVS. An AI model could reliably (Krippendorff's alpha = 0.71, 95% CI 0.65-0.77) quantify inflammation when compared to a second surgeon (alpha = 0.82, 95% CI 0.75-0.87). Conclusions An AI model can identify the degree of gallbladder inflammation, which is predictive of cholecystectomy intra-operative course. This automated assessment could be useful for operating room workflow optimization and for targeted per-surgeon and per-resident feedback to accelerate acquisition of operative skills. [GRAPHICS] .

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