TY - JOUR
T1 - Identifying COVID-19 cases in outpatient settings
AU - Mao, Yinan
AU - Tan, Yi Roe
AU - Thein, Tun Linn
AU - Chai, Yi Ann Louis
AU - Cook, Alex R.
AU - Dickens, Borame L.
AU - Lew, Yii Jen
AU - Lim, Fong Seng
AU - Lim, Jue Tao
AU - Sun, Yinxiaohe
AU - Sundaram, Meena
AU - Soh, Alexius
AU - En Tan, Glorijoy Shi
AU - Wong, Franco Pey Gein
AU - Young, Barnaby
AU - Zeng, Kangwei
AU - Chen, Mark
AU - Ong, Desmond Luan Seng
N1 - Publisher Copyright:
© The Author(s), 2021.
PY - 2021/4/5
Y1 - 2021/4/5
N2 - Case identification is an ongoing issue for the COVID-19 epidemic, in particular for outpatient care where physicians must decide which patients to prioritise for further testing. This paper reports tools to classify patients based on symptom profiles based on 236 severe acute respiratory syndrome coronavirus 2 positive cases and 564 controls, accounting for the time course of illness using generalised multivariate logistic regression. Significant symptoms included abdominal pain, cough, diarrhoea, fever, headache, muscle ache, runny nose, sore throat, temperature between 37.5 and 37.9 °C and temperature above 38 °C, but their importance varied by day of illness at assessment. With a high percentile threshold for specificity at 0.95, the baseline model had reasonable sensitivity at 0.67. To further evaluate accuracy of model predictions, leave-one-out cross-validation confirmed high classification accuracy with an area under the receiver operating characteristic curve of 0.92. For the baseline model, sensitivity decreased to 0.56. External validation datasets reported similar result. Our study provides a tool to discern COVID-19 patients from controls using symptoms and day from illness onset with good predictive performance. It could be considered as a framework to complement laboratory testing in order to differentiate COVID-19 from other patients presenting with acute symptoms in outpatient care.
AB - Case identification is an ongoing issue for the COVID-19 epidemic, in particular for outpatient care where physicians must decide which patients to prioritise for further testing. This paper reports tools to classify patients based on symptom profiles based on 236 severe acute respiratory syndrome coronavirus 2 positive cases and 564 controls, accounting for the time course of illness using generalised multivariate logistic regression. Significant symptoms included abdominal pain, cough, diarrhoea, fever, headache, muscle ache, runny nose, sore throat, temperature between 37.5 and 37.9 °C and temperature above 38 °C, but their importance varied by day of illness at assessment. With a high percentile threshold for specificity at 0.95, the baseline model had reasonable sensitivity at 0.67. To further evaluate accuracy of model predictions, leave-one-out cross-validation confirmed high classification accuracy with an area under the receiver operating characteristic curve of 0.92. For the baseline model, sensitivity decreased to 0.56. External validation datasets reported similar result. Our study provides a tool to discern COVID-19 patients from controls using symptoms and day from illness onset with good predictive performance. It could be considered as a framework to complement laboratory testing in order to differentiate COVID-19 from other patients presenting with acute symptoms in outpatient care.
KW - Classification
KW - COVID-19
KW - diagnosis model
KW - online tool
KW - respiratory symptoms
UR - https://www.scopus.com/pages/publications/85103779993
U2 - 10.1017/S0950268821000704
DO - 10.1017/S0950268821000704
M3 - Article
C2 - 33814027
AN - SCOPUS:85103779993
SN - 0950-2688
VL - 149
JO - Epidemiology and Infection
JF - Epidemiology and Infection
M1 - e92
ER -