| Literature DB >> 35854727 |
Alaleh Azhir1, Soheila Talebi2, Louis-Henri Merino3, Thomas Lukasiewicz1, Edgar Argulian2, Jagat Narula2, Borislava Mihaylova1,4.
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. ©2022 AMIA - All rights reserved.Entities:
Mesh:
Year: 2022 PMID: 35854727 PMCID: PMC9285142
Source DB: PubMed Journal: AMIA Annu Symp Proc ISSN: 1559-4076