Keywords:
Infection, Computer Applications-General, Digital radiography, Conventional radiography, Respiratory system, Artificial Intelligence
Authors:
T. Fung1, J. W. Luo2, T. C. Lee3, B. Gallix2, J. J. R. Chong2; 1Montreal, Québec/CA, 2Montreal, QC/CA, 3Montreal/CA
DOI:
10.26044/ecr2019/C-3416
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