Development of electronic health records (EHR)-based machine learning models for pediatric inpatients is challenged by limited training data. Self-supervised learning using adult data may be a promising approach to creating robust pediatric prediction models. The primary objective was to determine whether a self-supervised model trained in adult inpatients was noninferior to logistic regression models trained in pediatric inpatients, for pediatric inpatient clinical prediction tasks.
Tópico:
Machine Learning in Healthcare
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4
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Altmétricas:
0
Información de la Fuente:
FuenteJournal of the American Medical Informatics Association