Prediction and Feature Importance Analysis for Severity of COVID-19 in South Korea Using Artificial Intelligence: Model Development and Validation
BackgroundThe number of deaths from COVID-19 continues to surge worldwide. In particular, if a patient's condition is sufficiently severe to require invasive ventilation, it is more likely to lead to death than to recovery. ObjectiveThe goal of our study was to analyze the factors related to CO...
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Main Authors: | Chung, Heewon (Author), Ko, Hoon (Author), Kang, Wu Seong (Author), Kim, Kyung Won (Author), Lee, Hooseok (Author), Park, Chul (Author), Song, Hyun-Ok (Author), Choi, Tae-Young (Author), Seo, Jae Ho (Author), Lee, Jinseok (Author) |
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Format: | Book |
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JMIR Publications,
2021-04-01T00:00:00Z.
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