Privacy-preserving federated prediction of pain intensity change based on multi-center survey data
Supratim Das, Mahdie Rafie, Paula Kammer, S{\o}ren T. Skou, Dorte T., Gr{\o}nne, Ewa M. Roos, Andr\'e Hajek, Hans-Helmut K\"onig, Md Shihab Ullaha,, Niklas Probul, Jan Baumbacha, Linda Baumbach

TL;DR
This study demonstrates that privacy-preserving federated machine learning can effectively build prognostic models from multi-center survey data, achieving comparable accuracy to centralized models while maintaining data privacy.
Contribution
The paper introduces and validates federated learning techniques for prognostic modeling using multi-center healthcare survey data, ensuring privacy without sacrificing model performance.
Findings
Federated models outperform local models in accuracy.
Federated and centralized models perform similarly, both better than local models.
Privacy-preserving federated learning achieves comparable results to data centralization.
Abstract
Background: Patient-reported survey data are used to train prognostic models aimed at improving healthcare. However, such data are typically available multi-centric and, for privacy reasons, cannot easily be centralized in one data repository. Models trained locally are less accurate, robust, and generalizable. We present and apply privacy-preserving federated machine learning techniques for prognostic model building, where local survey data never leaves the legally safe harbors of the medical centers. Methods: We used centralized, local, and federated learning techniques on two healthcare datasets (GLA:D data from the five health regions of Denmark and international SHARE data of 27 countries) to predict two different health outcomes. We compared linear regression, random forest regression, and random forest classification models trained on local data with those trained on the entire…
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Taxonomy
TopicsTraditional Chinese Medicine Studies
MethodsLinear Regression
