Andreas S Millarch, Fredrik Folke, Søren S Rudolph, Haytham M Kaafarani, Martin Sillesen
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引用次数: 0
Abstract
Background: Matching the necessary resources and facilities to attend to the needs of trauma patients is traditionally performed by clinicians using criteria-directed triage protocols. In the present study, it was hypothesized that an artificial intelligence (AI) model should be able to predict the need for major surgery based on data available at the scene.
Methods: Prehospital and in-hospital electronic health record data were available for 4578 patients in the Danish Prehospital Trauma Data set. Data included demographics (age and sex), clinical scores (airway, breathing, circulation, disability (ABCD) and Glasgow Coma Scale scores), and sequential vital signs (heart rate, blood pressure, and oxygen saturation). The data from the first 5, 10, and 20 min of prehospital contact were used for predicting the need for surgery up to 12 h after hospital arrival. Surgeries were stratified into all major surgical procedures and specialty-specific procedures (neurosurgery, abdominal surgery, and vascular surgery). The data set was split into training (70%), validation (20%) and holdout test (10%) data sets. Three hybrid neural networks were trained and performance was evaluated on the holdout test data set using the area under the receiver operating characteristic curve (ROC-AUC).
Results: Overall, the model achieved an ROC-AUC of 0.80-0.86 for predicting the need for major surgery. For predicting the need for major neurosurgery the ROC-AUC was 0.90-0.95, for predicting the need for major vascular surgery the ROC-AUC was 0.69-0.88, and for predicting the need for major abdominal surgery the ROC-AUC was 0.77-0.84.
Conclusion: Utilizing AI early in the prehospital phase of a trauma patient's trajectory can predict specialized surgical needs. This approach has the potential to aid the early triage of trauma patients.
期刊介绍:
The British Journal of Surgery (BJS), incorporating the European Journal of Surgery, stands as Europe's leading peer-reviewed surgical journal. It serves as an invaluable platform for presenting high-quality clinical and laboratory-based research across a wide range of surgical topics. In addition to providing a comprehensive coverage of traditional surgical practices, BJS also showcases emerging areas in the field, such as minimally invasive therapy and interventional radiology.
While the journal appeals to general surgeons, it also holds relevance for specialty surgeons and professionals working in closely related fields. By presenting cutting-edge research and advancements, BJS aims to revolutionize the way surgical knowledge is shared and contribute to the ongoing progress of the surgical community.