An improved model for predicting postoperative nausea and vomiting in ambulatory surgery patients using physician-modifiable risk factors |
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Authors: | Pankaj Sarin Richard D Urman Lucila Ohno-Machado |
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Institution: | 1.Department of Anesthesiology, Perioperative and Pain Medicine, Brigham and Women''s Hospital, Harvard Medial School, Boston, Massachusetts, USA;2.Division of Biomedical Informatics, University of California, San Diego, La Jolla, California, USA |
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Abstract: | ObjectivePostoperative nausea and vomiting (PONV) is a frequent complication in patients undergoing ambulatory surgery, with an incidence of 20%–65%. A predictive model can be utilized for decision support and feedback for practitioner practice improvement. The goal of this study was to develop a better model to predict the patient''s risk for PONV by incorporating both non-modifiable patient characteristics and modifiable practitioner-specific anesthetic practices.Materials and methodsData on 2505 ambulatory surgery cases were prospectively collected at an academic center. Sixteen patient-related, surgical, and anesthetic predictors were used to develop a logistic regression model. The experimental model (EM) was compared against the original Apfel model (OAM), refitted Apfel model (RAM), simplified Apfel risk score (SARS), and refitted Sinclair model (RSM) by examining the discriminating power calculated using area under the curve (AUC) and by examining calibration curves.ResultsThe EM contained 11 input variables. The AUC was 0.738 for the EM, 0.620 for the OAM, 0.629 for the RAM, 0.626 for the SARS, and 0.711 for the RSM. Pair-wise discrimination comparison of models showed statistically significant differences (p<0.05) in AUC between the EM and all other models, OAM and RSM, RAM and RSM, and SARS and RSM.DiscussionAll models except the OAM appeared to have good calibration for our institution''s ambulatory surgery data. Ours is the first model to break down risk by anesthetic technique and incorporate risk reduction due to PONV prophylaxis.ConclusionThe EM showed statistically significant improved discrimination over existing models and good calibration. However, the EM should be validated at another institution. |
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Keywords: | Decision support techniques diagnosis computer-assisted Postoperative nausea and vomiting logistic models ROC curve area under curve HUID machine learning statistical learning predictive modeling privacy technology |
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