TY - JOUR
T1 - Chest CT for triage during COVID-19 on the emergency department
T2 - myth or truth?
AU - Hermans, Joep J R
AU - Groen, Joost
AU - Zwets, Egon
AU - Boxma-De Klerk, Bianca M
AU - Van Werkhoven, Jacob M
AU - Ong, David S Y
AU - Hanselaar, Wessel E J J
AU - Waals-Prinzen, Lenneke
AU - Brown, Vanessa
N1 - Publisher Copyright:
© 2020, American Society of Emergency Radiology.
PY - 2020/12
Y1 - 2020/12
N2 - Abstract: Purpose: We aimed to investigate the diagnostic performance of chest CT compared with first RT-PCR results in adult patients suspected of COVID-19 infection in an ED setting. We also constructed a predictive machine learning model based on chest CT and additional data to improve the diagnostic accuracy of chest CT. Methods: This study’s cohort consisted of 319 patients who underwent chest CT and RT-PCR testing at the ED. Patient characteristics, demographics, symptoms, vital signs, laboratory tests, and chest CT results (CO-RADS) were collected. With first RT-PCR as reference standard, the diagnostic performance of chest CT using the CO-RADS score was assessed. Additionally, a predictive machine learning model was constructed using logistic regression. Results: Chest CT, with first RT-PCR as a reference, had a sensitivity, specificity, PPV, and NPV of 90.2%, 88.2%, 84.5%, and 92.7%, respectively. The prediction model with CO-RADS, ferritin, leucocyte count, CK, days of complaints, and diarrhea as predictors had a sensitivity, specificity, PPV, and NPV of 89.3%, 93.4%, 90.8%, and 92.3%, respectively. Conclusion: Chest CT, using the CO-RADS scoring system, is a sensitive and specific method that can aid in the diagnosis of COVID-19, especially if RT-PCR tests are scarce during an outbreak. Combining a predictive machine learning model could further improve the accuracy of diagnostic chest CT for COVID-19. Further candidate predictors should be analyzed to improve our model. However, RT-PCR should remain the primary standard of testing as up to 9% of RT-PCR positive patients are not diagnosed by chest CT or our machine learning model.
AB - Abstract: Purpose: We aimed to investigate the diagnostic performance of chest CT compared with first RT-PCR results in adult patients suspected of COVID-19 infection in an ED setting. We also constructed a predictive machine learning model based on chest CT and additional data to improve the diagnostic accuracy of chest CT. Methods: This study’s cohort consisted of 319 patients who underwent chest CT and RT-PCR testing at the ED. Patient characteristics, demographics, symptoms, vital signs, laboratory tests, and chest CT results (CO-RADS) were collected. With first RT-PCR as reference standard, the diagnostic performance of chest CT using the CO-RADS score was assessed. Additionally, a predictive machine learning model was constructed using logistic regression. Results: Chest CT, with first RT-PCR as a reference, had a sensitivity, specificity, PPV, and NPV of 90.2%, 88.2%, 84.5%, and 92.7%, respectively. The prediction model with CO-RADS, ferritin, leucocyte count, CK, days of complaints, and diarrhea as predictors had a sensitivity, specificity, PPV, and NPV of 89.3%, 93.4%, 90.8%, and 92.3%, respectively. Conclusion: Chest CT, using the CO-RADS scoring system, is a sensitive and specific method that can aid in the diagnosis of COVID-19, especially if RT-PCR tests are scarce during an outbreak. Combining a predictive machine learning model could further improve the accuracy of diagnostic chest CT for COVID-19. Further candidate predictors should be analyzed to improve our model. However, RT-PCR should remain the primary standard of testing as up to 9% of RT-PCR positive patients are not diagnosed by chest CT or our machine learning model.
KW - CO-RADS classification
KW - COVID-19
KW - Chest computed tomography
KW - Emergency Department
KW - Machine learning
KW - Prediction model
KW - Real-time reverse transcription polymerase chain reaction (RT-PCR)
UR - http://www.scopus.com/inward/record.url?scp=85088938357&partnerID=8YFLogxK
U2 - 10.1007/s10140-020-01821-1
DO - 10.1007/s10140-020-01821-1
M3 - Article
C2 - 32691211
SN - 1070-3004
VL - 27
SP - 641
EP - 651
JO - Emergency Radiology
JF - Emergency Radiology
IS - 6
ER -