Journal article
Federated Deep Learning Enables Cancer Subtyping by Proteomics
Z Cai, EL Boys, Z Noor, AT Aref, D Xavier, N Lucas, SG Williams, JMS Koh, RC Poulos, Y Wu, M Dausmann, KL Mackenzie, A Aguilar-Mahecha, C Armengol, MM Barranco, M Basik, ED Bowman, R Clifton-Bligh, EA Connolly, WA Cooper Show all
Cancer Discovery | Published : 2025
Abstract
Artificial intelligence applications in biomedicine face major challenges from data privacy requirements. To address this issue for clinically annotated tissue proteomic data, we developed a federated deep learning approach (ProCanFDL), training local models on simulated sites containing data from a pan-cancer cohort (n = 1,260) and 29 cohorts held behind private firewalls (n = 6,265), representing 19,930 replicate data-independent acquisition mass spectrometry runs. Local parameter updates were aggregated to build the global model, achieving a 43% performance gain on the hold-out test set (n = 625) in 14 cancer subtyping tasks compared with local models and matching centralized model perfor..
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Grants
Awarded by Fondation du cancer du sein du Québec