Affiliation:
1. Center for Pediatric Data Science and Analytics Methodology Johns Hopkins All Children's Hospital St. Petersburg Florida USA
2. Department of Anesthesia, Pain and Perioperative Medicine Johns Hopkins All Children's Hospital St. Petersburg Florida USA
3. Department of Anesthesia, Division of Pediatric Anesthesia Vanderbilt University School of Medicine, Monroe Carell Jr. Children's Hospital at Vanderbilt Nashville Tennessee USA
4. Department of Anaesthesia, Pharmacology and Intensive Care University Hospitals of Geneva Switzerland
5. Unit for Research & Innovation, Department of Anesthesia IRCCS Istituto Giannina Gaslini Genoa Italy
Abstract
AbstractBackgroundPediatric anesthesia has evolved to a high level of patient safety, yet a small chance remains for serious perioperative complications, even in those traditionally considered at low risk. In practice, prediction of at‐risk patients currently relies on the American Society of Anesthesiologists Physical Status (ASA‐PS) score, despite reported inconsistencies with this method.AimsThe goal of this study was to develop predictive models that can classify children as low risk for anesthesia at the time of surgical booking and after anesthetic assessment on the procedure day.MethodsOur dataset was derived from APRICOT, a prospective observational cohort study conducted by 261 European institutions in 2014 and 2015. We included only the first procedure, ASA‐PS classification I to III, and perioperative adverse events not classified as drug errors, reducing the total number of records to 30 325 with an adverse event rate of 4.43%. From this dataset, a stratified train:test split of 70:30 was used to develop predictive machine learning algorithms that could identify children in ASA‐PS class I to III at low risk for severe perioperative critical events that included respiratory, cardiac, allergic, and neurological complications.ResultsOur selected models achieved accuracies of >0.9, areas under the receiver operating curve of 0.6–0.7, and negative predictive values >95%. Gradient boosting models were the best performing for both the booking phase and the day‐of‐surgery phase.ConclusionsThis work demonstrates that prediction of patients at low risk of critical PAEs can be made on an individual, rather than population‐based, level by using machine learning. Our approach yielded two models that accommodate wide clinical variability and, with further development, are potentially generalizable to many surgical centers.
Subject
Anesthesiology and Pain Medicine,Pediatrics, Perinatology and Child Health
Cited by
3 articles.
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