QMCRDCLGDec 8, 2024

FedRBE -- a decentralized privacy-preserving federated batch effect correction tool for omics data based on limma

arXiv:2412.05894v1h-index: 6
Originality Incremental advance
AI Analysis

This addresses the problem of batch effect correction for researchers handling distributed omics data, offering an incremental improvement with enhanced privacy and usability.

The paper tackled batch effects in omics data by developing fedRBE, a decentralized tool that enables privacy-preserving correction without data sharing, achieving performance comparable to centralized methods with differences no greater than 3.6E-13.

Batch effects in omics data obscure true biological signals and constitute a major challenge for privacy-preserving analyses of distributed patient data. Existing batch effect correction methods either require data centralization, which may easily conflict with privacy requirements, or lack support for missing values and automated workflows. To bridge this gap, we developed fedRBE, a federated implementation of limma's removeBatchEffect method. We implemented it as an app for the FeatureCloud platform. Unlike its existing analogs, fedRBE effectively handles data with missing values and offers an automated, user-friendly online user interface (https://featurecloud.ai/app/fedrbe). Leveraging secure multi-party computation provides enhanced security guarantees over classical federated learning approaches. We evaluated our fedRBE algorithm on simulated and real omics data, achieving performance comparable to the centralized method with negligible differences (no greater than 3.6E-13). By enabling collaborative correction without data sharing, fedRBE facilitates large-scale omics studies where batch effect correction is crucial.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes