A machine-learning prediction model to identify risk of firearm injury using electronic health records data

Author:

Zhou Hui12,Nau Claudia12,Xie Fagen1ORCID,Contreras Richard1,Ling Grant Deborah1,Negriff Sonya12,Sidell Margo1,Koebnick Corinna12ORCID,Hechter Rulin12

Affiliation:

1. Department of Research and Evaluation, Kaiser Permanente Southern California , Pasadena, CA 91101, United States

2. Department of Health Systems Science, Kaiser Permanente Bernard J. Tyson School of Medicine , Pasadena, CA 91101, United States

Abstract

Abstract Importance Firearm injuries constitute a public health crisis. At the healthcare encounter level, they are, however, rare events. Objective To develop a predictive model to identify healthcare encounters of adult patients at increased risk of firearm injury to target screening and prevention efforts. Materials and Methods Electronic health records data from Kaiser Permanente Southern California (KPSC) were used to identify healthcare encounters of patients with fatal and non-fatal firearm injuries, as well as healthcare visits of a sample of matched controls during 2010-2018. More than 170 predictors, including diagnoses, healthcare utilization, and neighborhood characteristics were identified. Extreme gradient boosting (XGBoost) and a split sample design were used to train and test a model that predicted risk of firearm injury within the next 3 years at the encounter level. Results A total of 3879 firearm injuries were identified among 5 288 529 KPSC adult members. Prevalence at the healthcare encounter level was 0.01%. The 15 most important predictors included demographics, healthcare utilization, and neighborhood-level socio-economic factors. The sensitivity and specificity of the final model were 0.83 and 0.56, respectively. A very high-risk group (top 1% of predicted risk) yielded a positive predictive value of 0.14% and sensitivity of 13%. This high-risk group potentially reduces screening burden by a factor of 11.7, compared to universal screening. Results for alternative probability cutoffs are presented. Discussion Our model can support more targeted screening in healthcare settings, resulting in improved efficiency of firearm injury risk assessment and prevention efforts.

Funder

Kaiser Permanente’s Office of Community Health

Publisher

Oxford University Press (OUP)

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