A validated, real-time prediction model for favorable outcomes in hospitalized COVID-19 patients
Date
2020Author
Razavian, Narges
Major, Vincent J.
Sudarshan, Mukund
Burk-Rafel, Jesse
Stella, Peter
Randhawa, Hardev
Bilaloglu, Seda
Chen, Ji
Nguy, Vuthy
Wang, Walter
Zhang, Hao
Reinstein, Ilan
Kudlowitz, David
Zenger, Cameron
Cao, Meng
Zhang, Ruina
Dogra, Siddhant
Harish, Keerthi B.
Bosworth, Brian
Francois, Fritz
Horwitz, Leora I.
Ranganath, Rajesh
Austrian, Jonathan
Aphinyanaphongs, Yindalon
Metadata
Show full item recordAbstract
The COVID-19 pandemic has challenged front-line clinical decision-making, leading to numerous published prognostic tools. However,
few models have been prospectively validated and none report implementation in practice. Here, we use 3345 retrospective and 474
prospective hospitalizations to develop and validate a parsimonious model to identify patients with favorable outcomes within 96 h of
a prediction, based on real-time lab values, vital signs, and oxygen support variables. In retrospective and prospective validation, the
model achieves high average precision (88.6% 95% CI: [88.4–88.7] and 90.8% [90.8–90.8]) and discrimination (95.1% [95.1–95.2] and
86.8% [86.8–86.9]) respectively. We implemented and integrated the model into the EHR, achieving a positive predictive value of
93.3% with 41% sensitivity. Preliminary results suggest clinicians are adopting these scores into their clinical workflows.
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https://doi.org/10.1038/s41746-020-00343-xCollections
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