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Artificial intelligence–based CT metrics used in predicting clinical outcome of COVID‐19 in young and middle‐aged adults
3
Zitationen
15
Autoren
2022
Jahr
Abstract
Both men and women had characteristic distributions in lung lobes and bronchopulmonary segments. AI-based CT quantitative metrics can provide more precise information regarding lesion distribution and severity to predict clinical outcome.
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