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- Haoyu Jia, Sierra Simpson, Varshini Sathish, Brian P Curran, Alvaro A Macias, Ruth S Waterman, and Rodney A Gabriel.
- Department of Electrical and Computer Engineering, University of California San Diego, La Jolla, CA 92093, USA; Division of Perioperative Informatics, Department of Anesthesiology, University of California San Diego, La Jolla, CA 92093, USA.
- J Clin Anesth. 2023 Sep 1; 88: 111147111147.
Study ObjectivePerforming hip or knee arthroplasty as an outpatient surgery has been shown to be operationally and financially beneficial for selected patients. By applying machine learning models to predict patients suitable for outpatient arthroplasty, health care systems can better utilize resources efficiently. The goal of this study was to develop predictive models for identifying patients likely to be discharged same-day following hip or knee arthroplasty.DesignModel performance was assessed with 10-fold stratified cross-validation, evaluated over baseline determined by the proportion of eligible outpatient arthroplasty over sample size. The models used for classification were logistic regression, support vector classifier, balanced random forest, balanced bagging XGBoost classifier, and balanced bagging LightGBM classifier.SettingThe patient records were sampled from arthroplasty procedures at a single institution from October 2013 to November 2021.PatientsThe electronic intake records of 7322 knee and hip arthroplasty patients were sampled for the dataset. After data processing, 5523 records were kept for model training and validation.InterventionsNone.MeasurementsThe primary measures for the models were the F1-score, area under the receiver operating characteristic curve (ROCAUC), and area under the precision-recall curve. To measure feature importance, the SHapley Additive exPlanations value (SHAP) were reported from the model with the highest F1-score.ResultsThe best performing classifier (balanced random forest classifier) achieved an F1-score of 0.347: an improvement of 0.174 over baseline and 0.031 over logistic regression. The ROCAUC for this model was 0.734. Using SHAP, the top determinant features of the model included patient sex, surgical approach, surgery type, and body mass index.ConclusionsMachine learning models may utilize electronic health records to screen arthroplasty procedures for outpatient eligibility. Tree-based models demonstrated superior performance in this study.Copyright © 2023 Elsevier Inc. All rights reserved.
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