Machine learning can be used to identify relevant trajectory shape features for improved predictive risk modeling, which can help inform decisions for individualized patient management in intensive care during COVID-19 outbreaks. We present explainable random forests to dynamically predict next day mortality risk in COVID -19 positive and negative patients admitted to the Mount Sinai Health System between March 1st and June 8th, 2020 using patient time-series data of vitals, blood and other laboratory measurements from the previous 7 days. Three different models were assessed by using time series with: 1) most recent patient measurements, 2) summary statistics of trajectories (min/max/median/first/last/count), and 3) coefficients of fitted ...
Objective: To develop predictive models for in-hospital mortality and length of stay (LOS) for coron...
Abstract Background The coronavirus disease 2019 (COVID-19) pandemic caused by the SARS-Cov2 virus h...
Background:: In December 2020, the COVID-19 disease was confirmed in 1,665,775 patients and caused 4...
Incorporating repeated measurements of vitals and laboratory measurements can improve mortality risk...
Abstract The COVID-19 pandemic has created an urgent need for robust, scalable monitoring tools supp...
Methods We developed a prediction model to predict patients at risk for mortality using only laborat...
Abstract— The abrupt increase in the number of illnesses and high fatality rates during the covid-19...
Abstract Patients with severe COVID-19 have overwhelmed healthcare systems worldwide. We hypothesize...
We conducted a statistical study and developed a machine learning model to triage COVID-19 patients ...
Abstract The COVID-19 pandemic is impressively challenging the healthcare system. Several prognostic...
Rationale: Given the expanding number of COVID-19 cases and the potential for new waves of infection...
Predictions of COVID-19 case growth and mortality are critical to the decisions of political leaders...
Early prediction of patient mortality risks during a pandemic can decrease mortality by assuring eff...
Abstract Background COVID-19 caused more than 622 thousand deaths in Brazil. The infection can be as...
Background New York City quickly became an epicenter of the COVID-19 pandemic. Due to a sudden and ...
Objective: To develop predictive models for in-hospital mortality and length of stay (LOS) for coron...
Abstract Background The coronavirus disease 2019 (COVID-19) pandemic caused by the SARS-Cov2 virus h...
Background:: In December 2020, the COVID-19 disease was confirmed in 1,665,775 patients and caused 4...
Incorporating repeated measurements of vitals and laboratory measurements can improve mortality risk...
Abstract The COVID-19 pandemic has created an urgent need for robust, scalable monitoring tools supp...
Methods We developed a prediction model to predict patients at risk for mortality using only laborat...
Abstract— The abrupt increase in the number of illnesses and high fatality rates during the covid-19...
Abstract Patients with severe COVID-19 have overwhelmed healthcare systems worldwide. We hypothesize...
We conducted a statistical study and developed a machine learning model to triage COVID-19 patients ...
Abstract The COVID-19 pandemic is impressively challenging the healthcare system. Several prognostic...
Rationale: Given the expanding number of COVID-19 cases and the potential for new waves of infection...
Predictions of COVID-19 case growth and mortality are critical to the decisions of political leaders...
Early prediction of patient mortality risks during a pandemic can decrease mortality by assuring eff...
Abstract Background COVID-19 caused more than 622 thousand deaths in Brazil. The infection can be as...
Background New York City quickly became an epicenter of the COVID-19 pandemic. Due to a sudden and ...
Objective: To develop predictive models for in-hospital mortality and length of stay (LOS) for coron...
Abstract Background The coronavirus disease 2019 (COVID-19) pandemic caused by the SARS-Cov2 virus h...
Background:: In December 2020, the COVID-19 disease was confirmed in 1,665,775 patients and caused 4...