9-1-1紧急医疗服务运送儿童枪支伤害风险预测:机器学习分析。

IF 1.2 4区 医学 Q3 EMERGENCY MEDICINE Pediatric emergency care Pub Date : 2024-12-12 DOI:10.1097/PEC.0000000000003314
Craig D Newgard, Sean Babcock, Susan Malveau, Amber Lin, Jason Goldstick, Patrick Carter, Jennifer N B Cook, Xubo Song, Ran Wei, Apoorva Salvi, Mary E Fallat, Nathan Kuppermann, Peter C Jenkins, Joel A Fein, N Clay Mann
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引用次数: 0

摘要

目的:在美国各地乘坐救护车的儿童中,我们使用机器学习模型开发了一种枪支伤害风险预测工具,该工具使用基本人口统计信息和与公开数据源匹配的家庭邮政编码。方法:我们纳入了2014年1月1日至2022年12月31日期间由救护车运送到47个州的急性护理医院的0-17岁儿童和青少年。我们使用了96个预测指标,包括基本人口统计信息和与家庭邮政编码相匹配的社区措施,这些数据来自5个数据源:EMS记录、美国社区调查、儿童机会指数、县健康排名和社会脆弱性指数。我们将儿童分为0-10岁(青春期前)和11-17岁(青春期)两组,并使用机器学习为每个年龄组开发高特异性风险预测模型,以最大限度地减少假阳性。结果:救护车运送儿童6191909人,其中火器伤儿童21625人(0.35%)。在0-10岁儿童中(n = 3,149,430名儿童,2,840名[0.09%]火器伤),该模型识别火器伤儿童的特异性为95.1%,敏感性为22.4%,曲线下面积为0.761,阳性预测值为0.41%。在11-17岁青少年(n = 3,042,479名儿童,18,785名[0.62%]火器伤患者)中,该模型识别火器伤患者的特异性为94.8%,敏感性为39.0%,曲线下面积为0.818,阳性预测值为4.47%。儿童高产预测因子有7个,青少年高产预测因子有3个,且预测因子重叠较少。结论:在救护车运送的儿童患者中,基本的人口统计信息和社区措施可以识别出枪支伤害风险较高的儿童和青少年,可以指导有针对性的伤害预防资源和干预措施。
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Firearm Injury Risk Prediction Among Children Transported by 9-1-1 Emergency Medical Services: A Machine Learning Analysis.

Objective: Among children transported by ambulance across the United States, we used machine learning models to develop a risk prediction tool for firearm injury using basic demographic information and home ZIP code matched to publicly available data sources.

Methods: We included children and adolescents 0-17 years transported by ambulance to acute care hospitals in 47 states from January 1, 2014 through December 31, 2022. We used 96 predictors, including basic demographic information and neighborhood measures matched to home ZIP code from 5 data sources: EMS records, American Community Survey, Child Opportunity Index, County Health Rankings, and Social Vulnerability Index. We separated children into 0-10 years (preadolescent) and 11-17 years (adolescent) cohorts and used machine learning to develop high-specificity risk prediction models for each age group to minimize false positives.

Results: There were 6,191,909 children transported by ambulance, including 21,625 (0.35%) with firearm injuries. Among children 0-10 years (n = 3,149,430 children, 2,840 [0.09%] with firearm injuries), the model had 95.1% specificity, 22.4% sensitivity, area under the curve 0.761, and positive predictive value 0.41% for identifying children with firearm injuries. Among adolescents 11-17 years (n = 3,042,479 children, 18,785 [0.62%] with firearm injuries), the model had 94.8% specificity, 39.0% sensitivity, area under the curve 0.818, and positive predictive value 4.47% for identifying patients with firearm injury. There were 7 high-yield predictors among children and 3 predictors among adolescents, with little overlap.

Conclusions: Among pediatric patients transported by ambulance, basic demographic information and neighborhood measures can identify children and adolescents at elevated risk of firearm injuries, which may guide focused injury prevention resources and interventions.

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来源期刊
Pediatric emergency care
Pediatric emergency care 医学-急救医学
CiteScore
2.40
自引率
14.30%
发文量
577
审稿时长
3-6 weeks
期刊介绍: Pediatric Emergency Care®, features clinically relevant original articles with an EM perspective on the care of acutely ill or injured children and adolescents. The journal is aimed at both the pediatrician who wants to know more about treating and being compensated for minor emergency cases and the emergency physicians who must treat children or adolescents in more than one case in there.
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