Risk assessment for intraabdominal injury following blunt trauma in children: Derivation and validation of a machine learning model
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Background: Computed tomography (CT) is the gold standard for diagnosing intra-abdominal injury (IAI) but is expensive and risks radiation exposure. The Pediatric Emergency Care Applied Research Network (PECARN) model identifies children at low risk of IAI requiring intervention (IAI-I) in whom CT may be omitted, but does not provide an individualized risk assessment to positively predict IAI-I. We sought to apply machine learning algorithms to the PECARN blunt abdominal trauma (BAT) dataset experimentally to create models for predicting both the presence and absence of IAI-I for pediatric BAT victims.
Methods: Using the PECARN dataset we derived and validated predictive models for IAI-I. The dataset was divided into derivation (n=7940) and validation (n=4089) subsets. Six algorithms were tested to create two models using 19 clinical variables including emesis, dyspnea, GCS
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