Recommender Engine Driven Client Selection in Federated Brain Tumor Segmentation
Journal:
arXiv
Published Date:
Dec 28, 2024
Abstract
This study presents a robust and efficient client selection protocol designed
to optimize the Federated Learning (FL) process for the Federated Tumor
Segmentation Challenge (FeTS 2024). In the evolving landscape of FL, the
judicious selection of collaborators emerges as a critical determinant for the
success and efficiency of collective learning endeavors, particularly in
domains requiring high precision. This work introduces a recommender engine
framework based on non-negative matrix factorization (NNMF) and a hybrid
aggregation approach that blends content-based and collaborative filtering.
This method intelligently analyzes historical performance, expertise, and other
relevant metrics to identify the most suitable collaborators. This approach not
only addresses the cold start problem where new or inactive collaborators pose
selection challenges due to limited data but also significantly improves the
precision and efficiency of the FL process. Additionally, we propose harmonic
similarity weight aggregation (HSimAgg) for adaptive aggregation of model
parameters. We utilized a dataset comprising 1,251 multi-parametric magnetic
resonance imaging (mpMRI) scans from individuals diagnosed with glioblastoma
(GBM) for training purposes and an additional 219 mpMRI scans for external
evaluations. Our federated tumor segmentation approach achieved dice scores of
0.7298, 0.7424, and 0.8218 for enhancing tumor (ET), tumor core (TC), and whole
tumor (WT) segmentation tasks respectively on the external validation set. In
conclusion, this research demonstrates that selecting collaborators with
expertise aligned to specific tasks, like brain tumor segmentation, improves
the effectiveness of FL networks.