BACKGROUND The rate of bile duct injury (BDI) in laparoscopic cholecystectomy (LC) continues to be high due to low critical view of safety (CVS) achievement and the absence of an… Click to show full abstract
BACKGROUND The rate of bile duct injury (BDI) in laparoscopic cholecystectomy (LC) continues to be high due to low critical view of safety (CVS) achievement and the absence of an effective quality control system. The development of an intelligent system enables the automatic quality control of LC surgery and, eventually, the mitigation of BDI. This study aims to develop an intelligent surgical quality control system for LC and using the system to evaluate LC videos and investigate factors associated with CVS achievement. MATERIALS AND METHODS SurgSmart, an intelligent system capable of recognizing surgical phases, disease severity, critical division action, and CVS automatically, was developed using training datasets. SurgSmart was also applied in another multicenter dataset to validate its application and investigate factors associated with CVS achievement. RESULTS SurgSmart performed well in all models, with the critical division action model achieving the highest overall accuracy (98.49%), followed by the disease severity model (95.45%) and surgical phases model (88.61%). CVS I, CVS II, and CVS III had an accuracy of 80.64%, 97.62%, and 78.87%, respectively. CVS was achieved in 4.33% in the system application dataset. Additionally, the analysis indicated that surgeons at a higher hospital-level had a higher CVS achievement rate. However, there was still considerable variation in CVS achievement among surgeons in the same hospital. CONCLUSION SurgSmart, the surgical quality control system, performed admirably in our study. Additionally, the system's initial application demonstrated its broad potential for use in surgical quality control.
               
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