Multi-site fMRI Analysis Using Privacy-preserving Federated Learning and Domain Adaptation: ABIDE Results
Xiaoxiao Li, Yufeng Gu, Nicha Dvornek, Lawrence Staib, Pamela Ventola,, and James S. Duncan

TL;DR
This paper presents a privacy-preserving federated learning framework with domain adaptation for multi-site fMRI analysis, enabling collaborative neuroimaging studies without sharing sensitive data.
Contribution
It introduces a novel federated learning approach with randomized model updates and domain adaptation techniques tailored for multi-site fMRI classification.
Findings
Federated learning improves multi-site fMRI classification accuracy.
Randomization mechanisms enhance privacy protection.
Domain adaptation methods address distribution differences across sites.
Abstract
Deep learning models have shown their advantage in many different tasks, including neuroimage analysis. However, to effectively train a high-quality deep learning model, the aggregation of a significant amount of patient information is required. The time and cost for acquisition and annotation in assembling, for example, large fMRI datasets make it difficult to acquire large numbers at a single site. However, due to the need to protect the privacy of patient data, it is hard to assemble a central database from multiple institutions. Federated learning allows for population-level models to be trained without centralizing entities' data by transmitting the global model to local entities, training the model locally, and then averaging the gradients or weights in the global model. However, some studies suggest that private information can be recovered from the model gradients or weights. In…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Domain Adaptation and Few-Shot Learning · MRI in cancer diagnosis
