4.5 Article

Using Machine Learning to Identify Change in Surgical Decision Making in Current Use of Damage Control Laparotomy

Journal

JOURNAL OF THE AMERICAN COLLEGE OF SURGEONS
Volume 228, Issue 3, Pages 255-264

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.jamcollsurg.2018.12.025

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Funding

  1. Center for Clinical and Translational Sciences - National Institutes of Health Clinical and Translational Award from the National Center for Advancing Translational Sciences [UL1 TR000371, KL2 TR000370]

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BACKGROUND: In an earlier study, we reported the successful reduction in the use of damage control laparotomy (DCL); however, no change in the relative frequencies of specific indications was observed. In this study, we aimed to use machine learning to help identify the changes in surgical decision making that occurred. STUDY DESIGN: Adult patients undergoing emergent trauma laparotomywere included: pre-quality improvement (QI): January 1, 2011 to October 31, 2013 and post-QI: November 1, 2013 to June 30, 2016. Using 72 variables before or during emergent laparotomy, random forest algorithms predicting DCL before and after a QI intervention were created. The main end point of the algorithms was the strength of individual factor significance in predicting the use of DCL, calculated by determining the mean decrease in accuracy (MDA) in the model if that variable was removed. RESULTS: In the pre-QI group, 24 of 72 factors significantly predicted DCL, the strongest being bowel resection (mean MDA 16) and operating room RBC transfusions (mean MDA 15). The remaining variables were spread along the continuum of care from injury to emergent laparotomy end. In the post-QI group, 12 of 72 factors significantly predicted DCL, the strongest being last operating room lactate (mean MDA 12) and operating room RBC transfusions (mean MDA 14). In addition to having 12 fewer significant factors predictive of DCL, the predictive factors in the post-QI group were mainly intraoperative factors. CONCLUSIONS: Amachine learning analysis provided novel insights into the changes in decision making achieved by a successful QI intervention and should be considered an adjunct to understanding successful pre- and post-intervention QI studies. The analysis suggested a shift toward using mostly intraoperative factors to determine the use ofDCL. (C) 2019 by the American College of Surgeons. Published by Elsevier Inc. All rights reserved.

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