BACKGROUND: The 2019 novel coronavirus disease (COVID-19) has created unprecedented medical challenges. There remains a need for validated risk prediction models to assess short-term mortality risk among hospitalized patients with COVID-19. The objective of this study was to develop and validate a 7-day and 14-day mortality risk prediction model for patients hospitalized with COVID-19. METHODS: We performed a multicenter retrospective cohort study with a separate multicenter cohort for external validation using two hospitals in New York, NY, and 9 hospitals in Massachusetts, respectively. A total of 664 patients in NY and 265 patients with COVID-19 in Massachusetts, hospitalized from March to April 2020. RESULTS: We developed a risk model...
Objective This study aimed to develop and externally validate a COVID-19 mortality risk prediction a...
Publisher Copyright: © 2020, The Author(s).Patients hospitalised with COVID-19 have a high mortality...
ObjectiveTo create and validate a simple and transferable machine learning model from electronic hea...
BackgroundThe 2019 novel coronavirus disease (COVID-19) has created unprecedented medical challenges...
ObjectivesThe development of a prognostic mortality risk model for hospitalized COVID-19 patients ma...
Background: The coronavirus disease 2019 (COVID-19) presents an urgent threat to global health. Pred...
Background: Coronavirus Disease 2019 is a pandemic that is straining healthcare resources, mainly ho...
Objectives To develop a prognostic model to identify and quantify risk factors for mortality among p...
Patients hospitalized with COVID-19 infection are at a high general risk for in-hospital mortality. ...
OBJECTIVE: To externally validate various prognostic models and scoring rules for predicting short t...
Background: COVID-19 has caused an unprecedented global health emergency. The strains of such a pand...
Objective: To externally validate various prognostic models and scoring rules for predicting short t...
Timely identification of COVID-19 patients at high risk of mortality can significantly improve patie...
Introduction: COVID-19 has overloaded worldwide medical facilities, leaving some potentially high-ri...
Objective: To develop predictive models for in-hospital mortality and length of stay (LOS) for coron...
Objective This study aimed to develop and externally validate a COVID-19 mortality risk prediction a...
Publisher Copyright: © 2020, The Author(s).Patients hospitalised with COVID-19 have a high mortality...
ObjectiveTo create and validate a simple and transferable machine learning model from electronic hea...
BackgroundThe 2019 novel coronavirus disease (COVID-19) has created unprecedented medical challenges...
ObjectivesThe development of a prognostic mortality risk model for hospitalized COVID-19 patients ma...
Background: The coronavirus disease 2019 (COVID-19) presents an urgent threat to global health. Pred...
Background: Coronavirus Disease 2019 is a pandemic that is straining healthcare resources, mainly ho...
Objectives To develop a prognostic model to identify and quantify risk factors for mortality among p...
Patients hospitalized with COVID-19 infection are at a high general risk for in-hospital mortality. ...
OBJECTIVE: To externally validate various prognostic models and scoring rules for predicting short t...
Background: COVID-19 has caused an unprecedented global health emergency. The strains of such a pand...
Objective: To externally validate various prognostic models and scoring rules for predicting short t...
Timely identification of COVID-19 patients at high risk of mortality can significantly improve patie...
Introduction: COVID-19 has overloaded worldwide medical facilities, leaving some potentially high-ri...
Objective: To develop predictive models for in-hospital mortality and length of stay (LOS) for coron...
Objective This study aimed to develop and externally validate a COVID-19 mortality risk prediction a...
Publisher Copyright: © 2020, The Author(s).Patients hospitalised with COVID-19 have a high mortality...
ObjectiveTo create and validate a simple and transferable machine learning model from electronic hea...