Prediction of Mortality in hospitalized COVID-19 patients in a statewide health network

2021 
AO_SCPLOWBSTRACTC_SCPLOWO_ST_ABSImportanceC_ST_ABSA predictive model to automatically identify the earliest determinants of both hospital discharge and mortality in hospitalized COVID-19 patients could be of great assistance to caregivers if the predictive information is generated and made available in the immediate hours following admission. ObjectiveTo identify the most important predictors of hospital discharge and mortality from measurements at admission for hospitalized COVID-19 patients. DesignObservational cohort study. SettingElectronic records from hospitalized patients. ParticipantsPatients admitted between March 3rd and August 24th with COVID-19 in Johns Hopkins Health System hospitals. Exposures216 phenotypic variables collected within 48 hours of admission. Main OutcomesWe used age-stratified ( =60 years) random survival forests with competing risks to identify the most important predictors of death and discharge. Fine-Gray competing risk regression (FGR) models were then constructed based on the most important RSF-derived covariates. ResultsOf 2212 patients, 1913 were discharged (age 57{+/-}19, time-to-discharge 9{+/-}11 days) while 279 died (age 75{+/-}14, time to death 14{+/-}15 days). Patients >= 60 years were nearly 10 times as likely to die within 60 days of admission as those 0.90 at 60-days). Conclusions and RelevanceWe identified markers collected within 2 days of admission that predict hospital discharge and mortality in COVID-19 patients and provide prediction models that may be used to guide patient care. Our proposed model suggests that hospital discharge and mortality can be forecasted with high accuracy based on 8-10 variables at this stage of the COVID-19 pandemic. Our findings also point to several specific pathways that could be the focus of future investigations directed at reducing mortality and expediting hospital discharge among COVID-19 patients. Probability of hospital discharge increased over the course of the pandemic. KO_SCPLOWEYC_SCPLOW PO_SCPLOWOINTSC_SCPLOWO_ST_ABSQuestionC_ST_ABSCan we predict the likelihood of hospital discharge as well as mortality from data obtained in the first 48 hours from admission in hospitalized COVID-19 patients? FindingsModels based on extensive phenotyping mined directly from electronic medical records followed by variable selection, accounted for the competing events of hospital death versus discharge, predicted both death and discharge with area under the receiver operating characteristic curves of >0.80. MeaningHospital discharge and mortality can be forecasted with high accuracy based on just 8-10 variables, and the probability of hospital discharge increased over the course of the pandemic.
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