Artificial intelligence in pulmonary medicine: computer vision, predictive model and COVID-19

Danai Khemasuwan, Jeffrey S. Sorensen, Henri G. Colt

Source: Eur Respir Rev, 29 (157) 200181; 10.1183/16000617.0181-2020
Journal Issue: September

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Danai Khemasuwan, Jeffrey S. Sorensen, Henri G. Colt. Artificial intelligence in pulmonary medicine: computer vision, predictive model and COVID-19. Eur Respir Rev, 29 (157) 200181; 10.1183/16000617.0181-2020

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