Early prediction of level-of-care requirements in patients with COVID-19

Author:

Hao Boran1,Sotudian Shahabeddin1ORCID,Wang Taiyao1ORCID,Xu Tingting1,Hu Yang1,Gaitanidis Apostolos2,Breen Kerry2,Velmahos George C2,Paschalidis Ioannis Ch1ORCID

Affiliation:

1. Center for Information and Systems Engineering, Boston University, Boston, United States

2. Division of Trauma, Emergency Services, and Surgical Critical Care Massachusetts General Hospital, Harvard Medical School, Boston, United States

Abstract

This study examined records of 2566 consecutive COVID-19 patients at five Massachusetts hospitals and sought to predict level-of-care requirements based on clinical and laboratory data. Several classification methods were applied and compared against standard pneumonia severity scores. The need for hospitalization, ICU care, and mechanical ventilation were predicted with a validation accuracy of 88%, 87%, and 86%, respectively. Pneumonia severity scores achieve respective accuracies of 73% and 74% for ICU care and ventilation. When predictions are limited to patients with more complex disease, the accuracy of the ICU and ventilation prediction models achieved accuracy of 83% and 82%, respectively. Vital signs, age, BMI, dyspnea, and comorbidities were the most important predictors of hospitalization. Opacities on chest imaging, age, admission vital signs and symptoms, male gender, admission laboratory results, and diabetes were the most important risk factors for ICU admission and mechanical ventilation. The factors identified collectively form a signature of the novel COVID-19 disease.

Funder

National Science Foundation

National Institute of General Medical Sciences

Office of Naval Research

National Institutes of Health

Publisher

eLife Sciences Publications, Ltd

Subject

General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology,General Medicine,General Neuroscience

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