Author:
Du Richard,Tsougenis Efstratios D.,Ho Joshua W. K.,Chan Joyce K. Y.,Chiu Keith W. H.,Fang Benjamin X. H.,Ng Ming Yen,Leung Siu-Ting,Lo Christine S. Y.,Wong Ho-Yuen F.,Lam Hiu-Yin S.,Chiu Long-Fung J.,So Tiffany Y,Wong Ka Tak,Wong Yiu Chung I.,Yu Kevin,Yeung Yiu-Cheong,Chik Thomas,Pang Joanna W. K.,Wai Abraham Ka-chung,Kuo Michael D.,Lam Tina P. W.,Khong Pek-Lan,Cheung Ngai-Tseung,Vardhanabhuti Varut
Abstract
AbstractTriaging and prioritising patients for RT-PCR test had been essential in the management of COVID-19 in resource-scarce countries. In this study, we applied machine learning (ML) to the task of detection of SARS-CoV-2 infection using basic laboratory markers. We performed the statistical analysis and trained an ML model on a retrospective cohort of 5148 patients from 24 hospitals in Hong Kong to classify COVID-19 and other aetiology of pneumonia. We validated the model on three temporal validation sets from different waves of infection in Hong Kong. For predicting SARS-CoV-2 infection, the ML model achieved high AUCs and specificity but low sensitivity in all three validation sets (AUC: 89.9–95.8%; Sensitivity: 55.5–77.8%; Specificity: 91.5–98.3%). When used in adjunction with radiologist interpretations of chest radiographs, the sensitivity was over 90% while keeping moderate specificity. Our study showed that machine learning model based on readily available laboratory markers could achieve high accuracy in predicting SARS-CoV-2 infection.
Publisher
Springer Science and Business Media LLC
Cited by
23 articles.
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