Abstract

BackgroundPrioritizing patients in need of intensive care is necessary to reduce the mortality rate during the COVID-19 pandemic. Although several scoring methods have been introduced, many require laboratory or radiographic findings that are not always easily available.ObjectiveThe purpose of this study was to develop a machine learning model that predicts the need for intensive care for patients with COVID-19 using easily obtainable characteristics—baseline demographics, comorbidities, and symptoms.MethodsA retrospective study was performed using a nationwide cohort in South Korea. Patients admitted to 100 hospitals from January 25, 2020, to June 3, 2020, were included. Patient information was collected retrospectively by the attending physicians in each hospital and uploaded to an online case report form. Variables that could be easily provided were extracted. The variables were age, sex, smoking history, body temperature, comorbidities, activities of daily living, and symptoms. The primary outcome was the need for intensive care, defined as admission to the intensive care unit, use of extracorporeal life support, mechanical ventilation, vasopressors, or death within 30 days of hospitalization. Patients admitted until March 20, 2020, were included in the derivation group to develop prediction models using an automated machine learning technique. The models were externally validated in patients admitted after March 21, 2020. The machine learning model with the best discrimination performance was selected and compared against the CURB-65 (confusion, urea, respiratory rate, blood pressure, and 65 years of age or older) score using the area under the receiver operating characteristic curve (AUC).ResultsA total of 4787 patients were included in the analysis, of which 3294 were assigned to the derivation group and 1493 to the validation group. Among the 4787 patients, 460 (9.6%) patients needed intensive care. Of the 55 machine learning models developed, the XGBoost model revealed the highest discrimination performance. The AUC of the XGBoost model was 0.897 (95% CI 0.877-0.917) for the derivation group and 0.885 (95% CI 0.855-0.915) for the validation group. Both the AUCs were superior to those of CURB-65, which were 0.836 (95% CI 0.825-0.847) and 0.843 (95% CI 0.829-0.857), respectively.ConclusionsWe developed a machine learning model comprising simple patient-provided characteristics, which can efficiently predict the need for intensive care among patients with COVID-19.

Highlights

  • COVID-19 is an ongoing global pandemic caused by the severe acute respiratory syndrome virus 2 with over 26 million confirmed cases worldwide as of August 31, 2020 [1]

  • The mortality rate varies from 0.4 to 304.9 deaths per 1000 COVID-19 cases in the United States according to age group [4], while underlying comorbidities and sex are frequently reported as risk factors for a grave prognosis [5,6]

  • A total of 5193 patients with polymerase chain reaction–confirmed COVID-19 from 100 centers were registered with the nationwide cohort during the study period

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Summary

Introduction

COVID-19 is an ongoing global pandemic caused by the severe acute respiratory syndrome virus 2 with over 26 million confirmed cases worldwide as of August 31, 2020 [1]. The reported case fatality rates are higher in areas with sudden upsurges of COVID-19 compared to other regions, even in the same country. In South Korea, the estimated risk of death was 20.8% to 25.9% in Daegu and Gyeongsangbuk-do, which were regions that experienced a sudden COVID-19 outbreak, while other areas had a risk of 1.7% [9]. Such findings are due to the availability of hospital beds, medical professionals, and other necessary supplies. Prioritizing patients in need of intensive care is necessary to reduce the mortality rate during the COVID-19 pandemic. Several scoring methods have been introduced, many require laboratory or radiographic findings that are not always available

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