PLoS ONE (Jan 2023)

Statistical and machine learning approaches to predict the necessity for computed tomography in children with mild traumatic brain injury.

  • Tadashi Miyagawa,
  • Marina Saga,
  • Minami Sasaki,
  • Miyuki Shimizu,
  • Akira Yamaura

DOI
https://doi.org/10.1371/journal.pone.0278562
Journal volume & issue
Vol. 18, no. 1
p. e0278562

Abstract

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BackgroundMinor head trauma in children is a common reason for emergency department visits, but the risk of traumatic brain injury (TBI) in those children is very low. Therefore, physicians should consider the indication for computed tomography (CT) to avoid unnecessary radiation exposure to children. The purpose of this study was to statistically assess the differences between control and mild TBI (mTBI). In addition, we also investigate the feasibility of machine learning (ML) to predict the necessity of CT scans in children with mTBI.Methods and findingsThe study enrolled 1100 children under the age of 2 years to assess pre-verbal children. Other inclusion and exclusion criteria were per the PECARN study. Data such as demographics, injury details, medical history, and neurological assessment were used for statistical evaluation and creation of the ML algorithm. The number of children with clinically important TBI (ciTBI), mTBI on CT, and controls was 28, 30, and 1042, respectively. Statistical significance between the control group and clinically significant TBI requiring hospitalization (csTBI: ciTBI+mTBI on CT) was demonstrated for all nonparametric predictors except severity of the injury mechanism. The comparison between the three groups also showed significance for all predictors (pConclusionsThese results confirm the role and importance of each of the predictors mentioned in the PECARN study and show that ML could discriminate between children with csTBI and the control group.