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Learning patient-level prediction models across multiple healthcare databases: evaluation of ensembles for increasing model transportability
15
Zitationen
5
Autoren
2022
Jahr
Abstract
A simple federated learning approach that implements ensemble techniques to combine models independently developed across different databases for the same prediction question may improve the discriminative performance in new data (new database or clinical setting) but will need to be recalibrated using the new data. This could help medical decision making by improving prognostic model performance.
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