Clinical prediction rule for SARS-CoV-2 infection from 116 U.S. emergency departments 2-22-2021
Creators
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Kline, Jeffrey A.1
- Camargo Jr., Carlos A.2
- Courtney, D. Mark3
- Kabrhel, Christopher4
- Nordenholz, Kristen E.5
- Aufderheide, Thomas6
- Baugh, Joshua J.4
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Beiser, David G.7
- Bennett, Christopher L.8
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Bledsoe, Joseph9
- Castillo, Edward10
- Chisolm-Straker, Makini11
- Goldberg, Elizabeth M.12
- House, Hans13
- House, Stacey14
- Jang, Timothy15
- Lim, Stephen C.16
- Madsen, Troy E.17
- McCarthy, Danielle M.18
- Meltzer, Andrew19
- 1. Indiana University
- 2. Harvard Unversity
- 3. University of Texas Southwestern
- 4. Harvard University
- 5. University of Colorado
- 6. Medical College of Wisconsin
- 7. University of Chicago
- 8. Stanford University
- 9. Intermountain Healthcare
- 10. University of California
- 11. Mt. Sinai School of Medicine
- 12. Brown University
- 13. University of Iowa
- 14. Washington University in St. Louis
- 15. University of California, Los Angeles
- 16. Louisiana State University
- 17. University of Utah
- 18. Northwestern University
- 19. George Washington University
Description
Objectives: Accurate and reliable criteria to rapidly estimate the probability of infection with the novel coronavirus-2 that causes the severe acute respiratory syndrome (SARS-CoV-2) and associated disease (COVID-19) remain an urgent unmet need, especially in emergency care. The objective was to derive and validate a clinical prediction score for SARS-CoV-2 infection that uses simple criteria widely available at the point of care.
Methods: Data came from the registry data from the national REgistry of suspected COVID-19 in EmeRgency care (RECOVER network) comprising 116 hospitals from 25 states in the US. Clinical variables and 30-day outcomes were abstracted from medical records of 19,850 emergency department (ED) patients tested for SARS-CoV-2. The criterion standard for diagnosis of SARS-CoV-2 required a positive molecular test from a swabbed sample or positive antibody testing within 30 days. The prediction score was derived from a 50% random sample (n = 9,925) using unadjusted analysis of 107 candidate variables as a screening step, followed by stepwise forward logistic regression on 72 variables.
Results: Multivariable regression yielded a 13-variable score, which was simplified to a 13-point score: +1 point each for age>50 years, measured temperature>37.5°C, oxygen saturation<95%, Black race, Hispanic or Latino ethnicity, household contact with known or suspected COVID-19, patient reported history of dry cough, anosmia/dysgeusia, myalgias or fever; and -1 point each for White race, no direct contact with infected person, or smoking. In the validation sample (n = 9,975), the probability from logistic regression score produced an area under the receiver operating characteristic curve of 0.80 (95% CI: 0.79–0.81), and this level of accuracy was retained across patients enrolled from the early spring to summer of 2020. In the simplified score, a score of zero produced a sensitivity of 95.6% (94.8–96.3%), specificity of 20.0% (19.0–21.0%), negative likelihood ratio of 0.22 (0.19–0.26). Increasing points on the simplified score predicted higher probability of infection (e.g., >75% probability with +5 or more points).
Conclusion: Criteria that are available at the point of care can accurately predict the probability of SARS-CoV-2 infection. These criteria could assist with decisions about isolation and testing at high throughput checkpoints.
Data availability
Data are within the protocol in the Supporting information files.Files
journal.pone.0248438.pdf
Additional details
Identifiers
- DOI
- 10.1371/journal.pone.0248438
- Other
- oai:uchicago.tind.io:5992