Evaluation of the Need for Intensive Care in Children With Pneumonia: Machine Learning Approach
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Title
Evaluation of the Need for Intensive Care in Children With Pneumonia: Machine Learning Approach
Authors
Keywords
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Journal
JMIR Medical Informatics
Volume 10, Issue 1, Pages e28934
Publisher
JMIR Publications Inc.
Online
2022-01-27
DOI
10.2196/28934
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