Machine learning models to evaluate mortality in pediatric patients with pneumonia in the intensive care unit

Author:

Lin Siang‐Rong1,Wu Jeng‐Hung2,Liu Yun‐Chung2,Chiu Pei‐Hsin1,Chang Tu‐Hsuan3,Wu En‐Ting2,Chou Chia‐Ching1ORCID,Chang Luan‐Yin2ORCID,Lai Fei‐Pei456

Affiliation:

1. Institute of Applied Mechanics National Taiwan University Taipei City Taiwan

2. Department of Pediatrics National Taiwan University Hospital Taipei City Taiwan

3. Department of Pediatrics Chi‐Mei Medical Center Tainan City Taiwan

4. Institute of Biomedical Electronics and Bioinformatics National Taiwan University Taipei City Taiwan

5. Department of Computer Science and Information Engineering National Taiwan University Taipei City Taiwan

6. Department of Electrical Engineering National Taiwan University Taipei City Taiwan

Abstract

AbstractObjectivesThis study aimed to predict mortality in children with pneumonia who were admitted to the intensive care unit (ICU) to aid decision‐making.Study DesignRetrospective cohort study conducted at a single tertiary hospital.PatientsThis study included children who were admitted to the pediatric ICU at the National Taiwan University Hospital between 2010 and 2019 due to pneumonia.MethodologyTwo prediction models were developed using tree‐structured machine learning algorithms. The primary outcomes were ICU mortality and 24‐h ICU mortality. A total of 33 features, including demographics, underlying diseases, vital signs, and laboratory data, were collected from the electronic health records. The machine learning models were constructed using the development data set, and performance matrices were computed using the holdout test data set.ResultsA total of 1231 ICU admissions of children with pneumonia were included in the final cohort. The area under the receiver operating characteristic curves (AUROCs) of the ICU mortality model and 24‐h ICU mortality models was 0.80 (95% confidence interval [CI], 0.69–0.91) and 0.92 (95% CI, 0.86–0.92), respectively. Based on feature importance, the model developed in this study tended to predict increased mortality for the subsequent 24 h if a reduction in the blood pressure, peripheral capillary oxygen saturation (SpO2), or higher partial pressure of carbon dioxide (PCO2) were observed.ConclusionsThis study demonstrated that the machine learning models for predicting ICU mortality and 24‐h ICU mortality in children with pneumonia have the potential to support decision‐making, especially in resource‐limited settings.

Publisher

Wiley

Reference34 articles.

1. Organization WH.World health statistics 2019: monitoring health for the SDGs sustainable development goals.World Health Organization 2019.

2. Organization WH.World health statistics 2021: monitoring health for the SDGs sustainable development goals.World Health Organization 2021.

3. Welfare MoHa. 2020Cause of death statistics.2021;https://www.mohw.gov.tw/lp-5256-2.html.

4. Childhood pneumonia increases risk for chronic obstructive pulmonary disease: the COPDGene study

5. Early life influences on the development of chronic obstructive pulmonary disease

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