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Using Shapes of COVID-19 Positive Patient-Specific Trajectories for Mortality Prediction
- Source :
- Alaleh Azhir
-
Abstract
- 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 cubic splines to trajectories. AUROC and AUPRC with cross-validation were used to compare models. We found that the second and third models performed statistically significantly better than the first model. Model interpretations are provided at patient-specific level to inform resource allocation and patient care.
Details
- Database :
- OpenAIRE
- Journal :
- Alaleh Azhir
- Accession number :
- edsair.dedup.wf.001..89c67fa2c042e27a3d49de6816f00b72