Fed-ComBat: A Generalized Federated Framework for Batch Effect Harmonization in Collaborative Studies
Santiago Silva (EPIONE), Ghiles Reguig (EPIONE), Neil P Oxtoby (UCL), Andre Altmann (UCL), Marco Lorenzi (EPIONE)

TL;DR
Fed-ComBat introduces a federated framework for batch effect harmonization that preserves data privacy and nonlinear effects, achieving comparable results to centralized methods in multi-site neuroimaging studies.
Contribution
It presents the first federated approach to batch effect correction that handles nonlinear covariates without data centralization, enhancing privacy and collaboration.
Findings
Fed-ComBat performs comparably to centralized methods in simulations.
Effective in harmonizing neuroimaging data across multiple cohorts.
Maintains nonlinear covariate effects without data sharing.
Abstract
The use of multi-centric analyses is crucial for obtaining sufficient sample sizes and representative clinical populations in experimental studies. In this setting, data harmonization techniques are typically employed to address systematic biases and ensure the interoperability of the data. State-of-the-art harmonisation approaches are based on the statistical theory of random effect modeling, allowing to account for either linear of non-linear biases and batch effects. However, optimizing these statistical methods generally requires data centralization at some point during the analysis pipeline, therefore introducing the risk of exposing individual patient information while posing significant data governance issues. To overcome this challenge, in this paper we present Fed-ComBat, a federated framework for batch effect harmonization on decentralized data. Fed-ComBat enables the…
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Taxonomy
TopicsMental Health Research Topics · Functional Brain Connectivity Studies · Advanced Causal Inference Techniques
