Back to Search
Start Over
Identification of Factors Associated with Return of Spontaneous Circulation after Pediatric Out-of-Hospital Cardiac Arrest Using Natural Language Processing.
- Source :
- Prehospital Emergency Care; 2023, Vol. 27 Issue 5, p687-694, 8p
- Publication Year :
- 2023
-
Abstract
- Prior studies examining prehospital characteristics related to return of spontaneous circulation (ROSC) in pediatric out-of-hospital cardiac arrest (OHCA) are limited to structured data. Natural language processing (NLP) could identify new factors from unstructured data using free-text narratives. The purpose of this study was to use NLP to examine EMS clinician free-text narratives for characteristics associated with prehospital ROSC in pediatric OHCA. This was a retrospective analysis of patients ages 0–17 with OHCA in 2019 from the ESO Data Collaborative. We performed an exploratory analysis of EMS narratives using NLP with an a priori token library. We then constructed biostatistical and machine learning models and compared their performance in predicting ROSC. There were 1,726 included EMS encounters for pediatric OHCA; 60% were male patients, and the median age was 1 year (IQR 0–9). Most cardiac arrest events (61.3%) were unwitnessed, 87.3% were identified as having medical causes, and 5.9% had initial shockable rhythms. Prehospital ROSC was achieved in 23.1%. Words most positively correlated with ROSC were "ROSC" (r = 0.42), "pulse" (r = 0.29), "drowning" (r = 0.13), and "PEA" (r = 0.12). Words negatively correlated with ROSC included "asystole" (r = −0.25), "lividity" (r = −0.14), and "cold" (r = −0.14). The terms "asystole," "pulse," "no breathing," "PEA," and "dry" had the greatest difference in frequency of appearance between encounters with and without ROSC (p < 0.05). The best-performing model for predicting prehospital ROSC was logistic regression with random oversampling using free-text data only (area under the receiver operating characteristic curve 0.92). EMS clinician free-text narratives reveal additional characteristics associated with prehospital ROSC in pediatric OHCA. Incorporating those terms into machine learning models of prehospital ROSC improves predictive ability. Therefore, NLP holds promise as a tool for use in predictive models with the goal to increase evidence-based management of pediatric OHCA. [ABSTRACT FROM AUTHOR]
- Subjects :
- RESEARCH
CARDIOPULMONARY resuscitation
STATISTICS
RETURN of spontaneous circulation
SCIENTIFIC observation
CONFIDENCE intervals
NATURAL language processing
MULTIPLE regression analysis
MACHINE learning
RETROSPECTIVE studies
DROWNING
FISHER exact test
MANN Whitney U Test
TRANSPORTATION of patients
GOODNESS-of-fit tests
COMPARATIVE studies
T-test (Statistics)
CARDIAC arrest
SYMPTOMS
EMERGENCY medical services
CHI-squared test
DESCRIPTIVE statistics
DISEASE duration
PREDICTION models
STATISTICAL correlation
STATISTICAL sampling
RECEIVER operating characteristic curves
DATA analysis software
ODDS ratio
PULSE (Heart beat)
COLD (Temperature)
EMERGENCY medicine
CHILDREN
ADOLESCENCE
Subjects
Details
- Language :
- English
- ISSN :
- 10903127
- Volume :
- 27
- Issue :
- 5
- Database :
- Complementary Index
- Journal :
- Prehospital Emergency Care
- Publication Type :
- Academic Journal
- Accession number :
- 164784128
- Full Text :
- https://doi.org/10.1080/10903127.2022.2074180