- Ng, Ming-Yen;
- Wan, Eric Yuk Fai;
- Wong, Ho Yuen Frank;
- Leung, Siu Ting;
- Lee, Jonan Chun Yin;
- Chin, Thomas Wing-Yan;
- Lo, Christine Shing Yen;
- Lui, Macy Mei-Sze;
- Chan, Edward Hung Tat;
- Fong, Ambrose Ho-Tung;
- Fung, Sau Yung;
- Ching, On Hang;
- Chiu, Keith Wan-Hang;
- Chung, Tom Wai Hin;
- Vardhanbhuti, Varut;
- Lam, Hiu Yin Sonia;
- To, Kelvin Kai Wang;
- Chiu, Jeffrey Long Fung;
- Lam, Tina Poy Wing;
- Khong, Pek Lan;
- Liu, Raymond Wai To;
- Chan, Johnny Wai Man;
- Wu, Alan Ka Lun;
- Lung, Kwok-Cheung;
- Hung, Ivan Fan Ngai;
- Lau, Chak Sing;
- Kuo, Michael D;
- Ip, Mary Sau-Man
Objectives
To develop: (1) two validated risk prediction models for coronavirus disease-2019 (COVID-19) positivity using readily available parameters in a general hospital setting; (2) nomograms and probabilities to allow clinical utilisation.Methods
Patients with and without COVID-19 were included from 4 Hong Kong hospitals. The database was randomly split into 2:1: for model development database (n = 895) and validation database (n = 435). Multivariable logistic regression was utilised for model creation and validated with the Hosmer-Lemeshow (H-L) test and calibration plot. Nomograms and probabilities set at 0.1, 0.2, 0.4 and 0.6 were calculated to determine sensitivity, specificity, positive predictive value (PPV) and negative predictive value (NPV).Results
A total of 1330 patients (mean age 58.2 ± 24.5 years; 50.7% males; 296 COVID-19 positive) were recruited. The first prediction model developed had age, total white blood cell count, chest x-ray appearances and contact history as significant predictors (AUC = 0.911 [CI = 0.880-0.941]). The second model developed has the same variables except contact history (AUC = 0.880 [CI = 0.844-0.916]). Both were externally validated on the H-L test (p = 0.781 and 0.155, respectively) and calibration plot. Models were converted to nomograms. Lower probabilities give higher sensitivity and NPV; higher probabilities give higher specificity and PPV.Conclusion
Two simple-to-use validated nomograms were developed with excellent AUCs based on readily available parameters and can be considered for clinical utilisation.