Epidemiological and Clinical Predictors of COVID-19
Clinical Infectious Diseases2020Vol. 71(15), pp. 786–792
Citations Over TimeTop 1% of 2020 papers
Yinxiaohe Sun, Vanessa Koh, Kalisvar Marimuthu, Oon Tek Ng, Barnaby Edward Young, Shawn Vasoo, Mónica Chan, Vernon J. M. Lee, Partha Pratim De, Timothy Barkham, Raymond Tzer Pin Lin, Alex R. Cook, Yee‐Sin Leo, Poh Lian Lim, Brenda Ang, Cheng Chuan Lee, David Chien Lye, Li Min Ling, Lawrence Soon-U Lee, Sapna P. Sadarangani, Chen Seong Wong, Tau Hong Lee, Ray Junhao Lin, Po Ying Chia, Mucheli Sharavan Sadasiv, Deborah Hee Ling Ng, Chiaw Yee Choy, Tsin Wen Yeo, Glorijoy Shi En Tan, Yu Kit Chan, Jun Yang Tay, Pei Hua Lee, Sean Wei Xiang Ong, Stephanie Sutjipto, Ian L.E. Wee, Frederico Dimatatac, Chi Jong Go, Florante Santo Isais
Abstract
Rapidly ascertainable clinical and laboratory data could identify individuals at high risk of COVID-19 and enable prioritization of PCR testing and containment efforts. Basic laboratory test results were crucial to prediction models.
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