Emergency Department Pediatric Readiness Among US Trauma Centers: A Machine Learning Analysis of Components Associated with Survival

dc.contributor.authorNewgard, Craig D.
dc.contributor.authorBabcock, Sean R.
dc.contributor.authorSong, Xubo
dc.contributor.authorRemick, Katherine E.
dc.contributor.authorGausche-Hill, Marianne
dc.contributor.authorLin, Amber
dc.contributor.authorMalveau, Susan
dc.contributor.authorMann, N. Clay
dc.contributor.authorNathens, Avery B.
dc.contributor.authorCook, Jennifer N. B.
dc.contributor.authorJenkins, Peter C.
dc.contributor.authorBurd, Randall S.
dc.contributor.authorHewes, Hilary A.
dc.contributor.authorGlass, Nina E.
dc.contributor.authorJensen, Aaron R.
dc.contributor.authorFallat, Mary E.
dc.contributor.authorAmes, Stefanie G.
dc.contributor.authorSalvi, Apoorva
dc.contributor.authorMcConnell, K. John
dc.contributor.authorFord, Rachel
dc.contributor.authorAuerbach, Marc
dc.contributor.authorBailey, Jessica
dc.contributor.authorRiddick, Tyne A.
dc.contributor.authorXin, Haichang
dc.contributor.authorKuppermann, Nathan
dc.contributor.authorPediatric Readiness Study Group
dc.contributor.departmentSurgery, School of Medicine
dc.date.accessioned2024-09-24T07:53:49Z
dc.date.available2024-09-24T07:53:49Z
dc.date.issued2023
dc.description.abstractObjective: We used machine learning to identify the highest impact components of emergency department (ED) pediatric readiness for predicting in-hospital survival among children cared for in US trauma centers. Background: ED pediatric readiness is associated with improved short-term and long-term survival among injured children and part of the national verification criteria for US trauma centers. However, the components of ED pediatric readiness most predictive of survival are unknown. Methods: This was a retrospective cohort study of injured children below 18 years treated in 458 trauma centers from January 1, 2012, through December 31, 2017, matched to the 2013 National ED Pediatric Readiness Assessment and the American Hospital Association survey. We used machine learning to analyze 265 potential predictors of survival, including 152 ED readiness variables, 29 patient variables, and 84 ED-level and hospital-level variables. The primary outcome was in-hospital survival. Results: There were 274,756 injured children, including 4585 (1.7%) who died. Nine ED pediatric readiness components were associated with the greatest increase in survival: policy for mental health care (+8.8% change in survival), policy for patient assessment (+7.5%), specific respiratory equipment (+7.2%), policy for reduced-dose radiation imaging (+7.0%), physician competency evaluations (+4.9%), recording weight in kilograms (+3.2%), life support courses for nursing (+1.0%-2.5%), and policy on pediatric triage (+2.5%). There was a 268% improvement in survival when the 5 highest impact components were present. Conclusions: ED pediatric readiness components related to specific policies, personnel, and equipment were the strongest predictors of pediatric survival and worked synergistically when combined.
dc.eprint.versionAuthor's manuscript
dc.identifier.citationNewgard CD, Babcock SR, Song X, et al. Emergency Department Pediatric Readiness Among US Trauma Centers: A Machine Learning Analysis of Components Associated With Survival. Ann Surg. 2023;278(3):e580-e588. doi:10.1097/SLA.0000000000005741
dc.identifier.urihttps://hdl.handle.net/1805/43543
dc.language.isoen_US
dc.publisherWolters Kluwer
dc.relation.isversionof10.1097/SLA.0000000000005741
dc.relation.journalAnnals of Surgery
dc.rightsPublisher Policy
dc.sourcePMC
dc.subjectChildren
dc.subjectTrauma centers
dc.subjectEmergency department
dc.subjectReadiness
dc.subjectSurvival
dc.titleEmergency Department Pediatric Readiness Among US Trauma Centers: A Machine Learning Analysis of Components Associated with Survival
dc.typeArticle
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