FedNI: Federated Graph Learning with Network Inpainting for Population-Based Disease Prediction
Liang Peng,
Nan Wang,
Nicha Dvornek
et al.
Abstract:Graph Convolutional Neural Networks (GCNs) are widely used for graph analysis. Specifically, in medical applications, GCNs can be used for disease prediction on a population graph, where graph nodes represent individuals and edges represent individual similarities. However, GCNs rely on a vast amount of data, which is challenging to collect for a single medical institution. In addition, a critical challenge that most medical institutions continue to face is addressing disease prediction in isolation with incom… Show more
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