Mind the Gap: Federated Learning Broadens Domain Generalization in Diagnostic AI Models
Soroosh Tayebi Arasteh, Christiane Kuhl, Marwin-Jonathan Saehn, Peter, Isfort, Daniel Truhn, Sven Nebelung

TL;DR
Federated learning enhances the generalization of diagnostic AI models across different datasets, especially benefiting smaller datasets and improving off-domain performance by leveraging data diversity.
Contribution
This study systematically evaluates how federated learning impacts diagnostic AI models' performance across various datasets, architectures, and domain shifts, highlighting its advantages for off-domain generalization.
Findings
Federated learning improves off-domain performance with diverse datasets.
Smaller datasets benefit more from federated training.
On-domain performance mainly depends on dataset size.
Abstract
Developing robust artificial intelligence (AI) models that generalize well to unseen datasets is challenging and usually requires large and variable datasets, preferably from multiple institutions. In federated learning (FL), a model is trained collaboratively at numerous sites that hold local datasets without exchanging them. So far, the impact of training strategy, i.e., local versus collaborative, on the diagnostic on-domain and off-domain performance of AI models interpreting chest radiographs has not been assessed. Consequently, using 610,000 chest radiographs from five institutions across the globe, we assessed diagnostic performance as a function of training strategy (i.e., local vs. collaborative), network architecture (i.e., convolutional vs. transformer-based), generalization performance (i.e., on-domain vs. off-domain), imaging finding (i.e., cardiomegaly, pleural effusion,…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Radiomics and Machine Learning in Medical Imaging · AI in cancer detection
