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Predictive Modeling to Identify Children With Complex Health Needs At Risk for Hospitalization.

Publication ,  Journal Article
Ming, DY; Zhao, C; Tang, X; Chung, RJ; Rogers, UA; Stirling, A; Economou-Zavlanos, NJ; Goldstein, BA
Published in: Hosp Pediatr
May 1, 2023

BACKGROUND: Identifying children at high risk with complex health needs (CCHN) who have intersecting medical and social needs is challenging. This study's objectives were to (1) develop and evaluate an electronic health record (EHR)-based clinical predictive model ("model") for identifying high-risk CCHN and (2) compare the model's performance as a clinical decision support (CDS) to other CDS tools available for identifying high-risk CCHN. METHODS: This retrospective cohort study included children aged 0 to 20 years with established care within a single health system. The model development/validation cohort included 33 months (January 1, 2016-September 30, 2018) and the testing cohort included 18 months (October 1, 2018-March 31, 2020) of EHR data. Machine learning methods generated a model that predicted probability (0%-100%) for hospitalization within 6 months. Model performance measures included sensitivity, positive predictive value, area under receiver-operator curve, and area under precision-recall curve. Three CDS rules for identifying high-risk CCHN were compared: (1) hospitalization probability ≥10% (model-predicted); (2) complex chronic disease classification (using Pediatric Medical Complexity Algorithm [PMCA]); and (3) previous high hospital utilization. RESULTS: Model development and testing cohorts included 116 799 and 27 087 patients, respectively. The model demonstrated area under receiver-operator curve = 0.79 and area under precision-recall curve = 0.13. PMCA had the highest sensitivity (52.4%) and classified the most children as high risk (17.3%). Positive predictive value of the model-based CDS rule (19%) was higher than CDS based on the PMCA (1.9%) and previous hospital utilization (15%). CONCLUSIONS: A novel EHR-based predictive model was developed and validated as a population-level CDS tool for identifying CCHN at high risk for future hospitalization.

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Published In

Hosp Pediatr

DOI

EISSN

2154-1671

Publication Date

May 1, 2023

Volume

13

Issue

5

Start / End Page

357 / 369

Location

United States

Related Subject Headings

  • Retrospective Studies
  • Predictive Value of Tests
  • Machine Learning
  • Humans
  • Hospitalization
  • Electronic Health Records
  • Child
  • 4203 Health services and systems
  • 1117 Public Health and Health Services
  • 1103 Clinical Sciences
 

Citation

APA
Chicago
ICMJE
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Ming, D. Y., Zhao, C., Tang, X., Chung, R. J., Rogers, U. A., Stirling, A., … Goldstein, B. A. (2023). Predictive Modeling to Identify Children With Complex Health Needs At Risk for Hospitalization. Hosp Pediatr, 13(5), 357–369. https://doi.org/10.1542/hpeds.2022-006861
Ming, David Y., Congwen Zhao, Xinghong Tang, Richard J. Chung, Ursula A. Rogers, Andrew Stirling, Nicoleta J. Economou-Zavlanos, and Benjamin A. Goldstein. “Predictive Modeling to Identify Children With Complex Health Needs At Risk for Hospitalization.Hosp Pediatr 13, no. 5 (May 1, 2023): 357–69. https://doi.org/10.1542/hpeds.2022-006861.
Ming DY, Zhao C, Tang X, Chung RJ, Rogers UA, Stirling A, et al. Predictive Modeling to Identify Children With Complex Health Needs At Risk for Hospitalization. Hosp Pediatr. 2023 May 1;13(5):357–69.
Ming, David Y., et al. “Predictive Modeling to Identify Children With Complex Health Needs At Risk for Hospitalization.Hosp Pediatr, vol. 13, no. 5, May 2023, pp. 357–69. Pubmed, doi:10.1542/hpeds.2022-006861.
Ming DY, Zhao C, Tang X, Chung RJ, Rogers UA, Stirling A, Economou-Zavlanos NJ, Goldstein BA. Predictive Modeling to Identify Children With Complex Health Needs At Risk for Hospitalization. Hosp Pediatr. 2023 May 1;13(5):357–369.

Published In

Hosp Pediatr

DOI

EISSN

2154-1671

Publication Date

May 1, 2023

Volume

13

Issue

5

Start / End Page

357 / 369

Location

United States

Related Subject Headings

  • Retrospective Studies
  • Predictive Value of Tests
  • Machine Learning
  • Humans
  • Hospitalization
  • Electronic Health Records
  • Child
  • 4203 Health services and systems
  • 1117 Public Health and Health Services
  • 1103 Clinical Sciences