Severity and Mortality Prediction Models to Triage Indian COVID-19
Patients
- URL: http://arxiv.org/abs/2109.02485v1
- Date: Thu, 2 Sep 2021 23:15:04 GMT
- Title: Severity and Mortality Prediction Models to Triage Indian COVID-19
Patients
- Authors: Samarth Bhatia (1), Yukti Makhija (1), Shalendra Singh (2), Ishaan
Gupta (1) ((1) Indian Institute of Technology, Delhi, (2) Armed Forces
Medical College, Pune)
- Abstract summary: As the second wave in India mitigates, COVID-19 has now infected about 29 million patients countrywide, leading to more than 350 thousand people dead.
Here, we present two interpretable machine learning models predicting the clinical outcomes, severity, and mortality, of the patients based on routine non-invasive surveillance of blood parameters from one of the largest cohorts of Indian patients at the day of admission.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: As the second wave in India mitigates, COVID-19 has now infected about 29
million patients countrywide, leading to more than 350 thousand people dead. As
the infections surged, the strain on the medical infrastructure in the country
became apparent. While the country vaccinates its population, opening up the
economy may lead to an increase in infection rates. In this scenario, it is
essential to effectively utilize the limited hospital resources by an informed
patient triaging system based on clinical parameters. Here, we present two
interpretable machine learning models predicting the clinical outcomes,
severity, and mortality, of the patients based on routine non-invasive
surveillance of blood parameters from one of the largest cohorts of Indian
patients at the day of admission. Patient severity and mortality prediction
models achieved 86.3% and 88.06% accuracy, respectively, with an AUC-ROC of
0.91 and 0.92. We have integrated both the models in a user-friendly web app
calculator, https://triage-COVID-19.herokuapp.com/, to showcase the potential
deployment of such efforts at scale.
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