FedDeepInsight—A privacy-first federated learning architecture for medical data
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| Publication date | 2025 |
| Journal | Informatics in Medicine Unlocked |
| Article number | 101691 |
| Volume | Issue number | 58 |
| Number of pages | 14 |
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| Abstract |
Medical data, hospital patient-specific data, are highly sensitive to privacy and are essential for research in the biomedical field. Although there are many new approaches to creating databases that ensure data must be FAIR and GDPR compliant, these approaches require the intervention of secured data handlers. To address this gap, this study investigates and designs a standardized Federated Learning (FL) architecture for medical data. Specifically, we examine traditional and novel methods for preprocessing, handling, and utilizing such data in FL. We develop “FedDeepInsight”, a novel data transformation framework that enables tabular data augmentation and transformation into image data prior to neural network training and FL. Additionally, we analyze how the type of dataset influences the performance of federated learning algorithms and machine learning models in terms of accuracy and efficiency. Our results indicate that FedAvg is the most reliable aggregation algorithm, providing superior accuracy, stability, and convergence, and FedYogi is also viable with well-tuned hyperparameters. For privacy protection, we recommend Differential Privacy (DP) with calibrated noise multipliers and initial upper and lower bounds for stability. Ultimately, we emerge as a promising solution for secure, privacy-preserving federation learning in healthcare.
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| Document type | Article |
| Language | English |
| Published at | https://doi.org/10.1016/j.imu.2025.101691 |
| Downloads |
FedDeepInsight
(Final published version)
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