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Predicting pediatric severe asthma exacerbations: an administrative claims-based predictive model.
Rezaeiahari, Mandana; Brown, Clare C; Eyimina, Arina; Perry, Tamara T; Goudie, Anthony; Boyd, Melanie; Tilford, J Mick; Jefferson, Akilah A.
Afiliação
  • Rezaeiahari M; College of Public Health, University of Arkansas for Medical Sciences, Little Rock, AR, USA.
  • Brown CC; College of Public Health, University of Arkansas for Medical Sciences, Little Rock, AR, USA.
  • Eyimina A; College of Public Health, University of Arkansas for Medical Sciences, Little Rock, AR, USA.
  • Perry TT; Department of Pediatrics, Allergy & Immunology Division, University of Arkansas for Medical Sciences, Little Rock, AR, USA.
  • Goudie A; Arkansas Children's Research Institute, Little Rock, AR, USA.
  • Boyd M; College of Public Health, University of Arkansas for Medical Sciences, Little Rock, AR, USA.
  • Tilford JM; College of Public Health, University of Arkansas for Medical Sciences, Little Rock, AR, USA.
  • Jefferson AA; College of Public Health, University of Arkansas for Medical Sciences, Little Rock, AR, USA.
J Asthma ; 61(3): 203-211, 2024 Mar.
Article em En | MEDLINE | ID: mdl-37725084
ABSTRACT

OBJECTIVE:

Previous machine learning approaches fail to consider race and ethnicity and social determinants of health (SDOH) to predict childhood asthma exacerbations. A predictive model for asthma exacerbations in children is developed to explore the importance of race and ethnicity, rural-urban commuting area (RUCA) codes, the Child Opportunity Index (COI), and other ICD-10 SDOH in predicting asthma outcomes.

METHODS:

Insurance and coverage claims data from the Arkansas All-Payer Claims Database were used to capture risk factors. We identified a cohort of 22,631 children with asthma aged 5-18 years with 2 years of continuous Medicaid enrollment and at least one asthma diagnosis in 2018. The goal was to predict asthma-related hospitalizations and asthma-related emergency department (ED) visits in 2019. The analytic sample was 59% age 5-11 years, 39% White, 33% Black, and 6% Hispanic. Conditional random forest models were used to train the model.

RESULTS:

The model yielded an area under the curve (AUC) of 72%, sensitivity of 55% and specificity of 78% in the OOB samples and AUC of 73%, sensitivity of 58% and specificity of 77% in the training samples. Consistent with previous literature, asthma-related hospitalization or ED visits in the previous year (2018) were the two most important variables in predicting hospital or ED use in the following year (2019), followed by the total number of reliever and controller medications.

CONCLUSIONS:

Predictive models for asthma-related exacerbation achieved moderate accuracy, but race and ethnicity, ICD-10 SDOH, RUCA codes, and COI measures were not important in improving model accuracy.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Asma Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Asma Idioma: En Ano de publicação: 2024 Tipo de documento: Article