2023
DOI: 10.1101/2023.04.22.23288741
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Transfer learning on structural brain age models to decode cognition in MS: a federated learning approach

Abstract: Introduction: Classical deep learning research requires lots of centralised data. However, data sets are often stored at different clinical centers, and sharing sensitive patient data such as brain images is difficult. In this manuscript, we investigated the feasibility of federated learning, sending models to the data instead of the other way round, for research on brain magnetic resonant images of people with multiple sclerosis (MS). Methods: Using transfer learning on a previously published brain age model,… Show more

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