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Accepted for/Published in: JMIR Medical Informatics

Date Submitted: Oct 23, 2018
Date Accepted: Dec 12, 2018

The final, peer-reviewed published version of this preprint can be found here:

Predicting Appropriate Hospital Admission of Emergency Department Patients with Bronchiolitis: Secondary Analysis

Luo G, Stone BL, Nkoy FL, He S, Johnson MD

Predicting Appropriate Hospital Admission of Emergency Department Patients with Bronchiolitis: Secondary Analysis

JMIR Med Inform 2019;7(1):e12591

DOI: 10.2196/12591

PMID: 30668518

PMCID: 6362392

Predicting Appropriate Hospital Admission of Emergency Department Patients with Bronchiolitis: Secondary Analysis

  • Gang Luo; 
  • Bryan L Stone; 
  • Flory L Nkoy; 
  • Shan He; 
  • Michael D Johnson

ABSTRACT

Background:

In children below age two, bronchiolitis is the most common reason for hospitalization. Each year in the United States, bronchiolitis causes 287,000 emergency department visits, 32%-40% of which result in hospitalization. Due to a lack of evidence and objective criteria for managing bronchiolitis, clinicians often make emergency department disposition decisions on hospitalization or discharge subjectively, leading to large practice variation. Our recent study provided the first operational definition of appropriate hospital admission for emergency department patients with bronchiolitis, and showed that 6.08% of emergency department disposition decisions for bronchiolitis were inappropriate. An accurate model for predicting appropriate hospital admission can guide emergency department disposition decisions for bronchiolitis and improve outcomes, but is yet to be built.

Objective:

The objective of this study is to fill the gap and build a reasonably accurate model for predicting appropriate hospital admission.

Methods:

Using Intermountain Healthcare data from 2011-2014, we developed the first machine learning classification model to predict appropriate hospital admission for emergency department patients with bronchiolitis.

Results:

Our model achieved an accuracy of 90.66% (=3,242/3,576, 95% CI: 89.68%-91.64%), a sensitivity of 92.09% (=1,083/1,176, 95% CI: 90.33%-93.56%), a specificity of 89.96% (=2,159/2,400, 95% CI: 88.69%-91.17%), and an area under the receiver operating characteristic curve of 0.960 (95% CI: 0.954-0.966). We pointed out possible improvements to the model to guide future research on this topic.

Conclusions:

Our model has good accuracy for predicting appropriate hospital admission for emergency department patients with bronchiolitis. With further improvement, our model could serve as a foundation for building decision support tools to guide disposition decisions for children with bronchiolitis presenting to emergency departments.


 Citation

Please cite as:

Luo G, Stone BL, Nkoy FL, He S, Johnson MD

Predicting Appropriate Hospital Admission of Emergency Department Patients with Bronchiolitis: Secondary Analysis

JMIR Med Inform 2019;7(1):e12591

DOI: 10.2196/12591

PMID: 30668518

PMCID: 6362392

Per the author's request the PDF is not available.