Reducing bias and increasing utility by federated generative modeling of medical images using a centralized adversary
Jean-Francois Rajotte, Sumit Mukherjee, Caleb Robinson, Anthony Ortiz,, Christopher West, Juan Lavista Ferres, Raymond T Ng

TL;DR
FELICIA is a federated generative modeling approach that enhances medical image analysis by enabling collaborative, privacy-preserving synthetic data generation, improving classification utility without sharing raw data.
Contribution
This work introduces FELICIA, a novel federated generative framework using a centralized adversary to improve medical image utility while maintaining data privacy.
Findings
High-quality synthetic images generated with limited data
Performance comparable to real data in classification tasks
Significant utility improvements across multiple datasets
Abstract
We introduce FELICIA (FEderated LearnIng with a CentralIzed Adversary) a generative mechanism enabling collaborative learning. In particular, we show how a data owner with limited and biased data could benefit from other data owners while keeping data from all the sources private. This is a common scenario in medical image analysis where privacy legislation prevents data from being shared outside local premises. FELICIA works for a large family of Generative Adversarial Networks (GAN) architectures including vanilla and conditional GANs as demonstrated in this work. We show that by using the FELICIA mechanism, a data owner with limited image samples can generate high-quality synthetic images with high utility while neither data owners has to provide access to its data. The sharing happens solely through a central discriminator that has access limited to synthetic data. Here, utility is…
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