Need for Emergent Intervention within 6 Hours: A Novel Prediction Model for Hospital Trauma Triage.
Rachel MorrisBasil S KaramEmily J ZolfaghariBenjamin ChenThomas KirshRoshan TouraniDavid J MiliaLena NapolitanoMarc de MoyaMarc ConteratoConstantin AliferisSisi MaChristopher TignanelliPublished in: Prehospital emergency care : official journal of the National Association of EMS Physicians and the National Association of State EMS Directors (2021)
Objective: A tiered trauma team activation system allocates resources proportional to patients' needs based upon injury burden. Previous trauma hospital-triage models are limited to predicting Injury Severity Score which is based on > 10% all-cause in-hospital mortality, rather than need for emergent intervention within 6 hours (NEI-6). Our aim was to develop a novel prediction model for hospital-triage that utilizes criteria available to the EMS provider to predict NEI-6 and the need for a trauma team activation.Methods: A regional trauma quality collaborative was used to identify all trauma patients ≥ 16 years from the American College of Surgeons-Committee on Trauma verified Level 1 and 2 trauma centers. Logistic regression and random forest were used to construct two predictive models for NEI-6 based on clinically relevant variables. Restricted cubic splines were used to model nonlinear predictors. The accuracy of the prediction model was assessed in terms of discrimination.Results: Using data from 12,624 patients for the training dataset (62.6% male; median age 61 years; median ISS 9) and 9,445 patients for the validation dataset (62.6% male; median age 59 years; median ISS 9), the following significant predictors were selected for the prediction models: age, gender, field GCS, vital signs, intentionality, and mechanism of injury. The final boosted tree model showed an AUC of 0.85 in the validation cohort for predicting NEI-6.Conclusions: The NEI-6 trauma triage prediction model used prehospital metrics to predict need for highest level of trauma activation. Prehospital prediction of major trauma may reduce undertriage mortality and improve resource utilization.
Keyphrases
- trauma patients
- emergency department
- newly diagnosed
- ejection fraction
- randomized controlled trial
- healthcare
- prognostic factors
- primary care
- cardiac arrest
- type diabetes
- palliative care
- chronic kidney disease
- artificial intelligence
- cardiovascular disease
- coronary artery disease
- patient reported
- electronic health record