Accuracy of automated computer-aided risk scoring systems to estimate the risk of COVID-19: a retrospective cohort study
Muhammad Faisal, Mohammed Amin Mohammed, Donald Richardson, Massimo Fiori, Kevin Beatson

TL;DR
This study evaluated how well automated risk scoring systems can predict the risk of COVID-19 in hospital admissions using existing patient data.
Contribution
The study introduces a validated automated model for predicting COVID-19 risk in unplanned hospital admissions using existing clinical data.
Findings
The CARS_N model showed the highest discrimination (c-statistic of 0.73) for predicting COVID-19 admissions.
The CARS_N model had better calibration compared to other CARSS models.
The model is suitable for triaging large numbers of unplanned admissions without additional data collection.
Abstract
In the UK National Health Service (NHS), the patient’s vital signs are monitored and summarised into a National Early Warning Score (NEWS) score. A set of computer-aided risk scoring systems (CARSS) was developed and validated for predicting in-hospital mortality and sepsis in unplanned admission to hospital using NEWS and routine blood tests results. We sought to assess the accuracy of these models to predict the risk of COVID-19 in unplanned admissions during the first phase of the pandemic. Adult ( > = 18 years) non-elective admissions discharged (alive/deceased) between 11-March-2020 to 13-June-2020 from two acute hospitals with an index NEWS electronically recorded within ± 24 h of admission. We identified COVID-19 admission based on ICD-10 code ‘U071’ which was determined by COVID-19 swab test results (hospital or community). We assessed the performance of CARSS (CARS_N, CARS_NB,…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · COVID-19 epidemiological studies · COVID-19 Clinical Research Studies
