Weighting schemes for federated learning in heterogeneous and imbalanced segmentation datasets

Details

Serval ID
serval:BIB_8576F8F4C127
Type
Inproceedings: an article in a conference proceedings.
Collection
Publications
Institution
Title
Weighting schemes for federated learning in heterogeneous and imbalanced segmentation datasets
Title of the conference
Brainlesion: Glioma, Multiple Sclerosis, Stroke and Traumatic Brain Injuries
Author(s)
Otálora Sebastian, Rafael-Patiño Jonathan, Madrona Antoine, Fischi-Gomez Elda, Ravano Veronica, Kober Tobias, Christensen Søren, Hakim Arsany, Wiest Roland, Richiardi Jonas, McKinley Richard
Publisher
Springer Cham
Address
Singapore
ISBN
978-3-031-33842-7
Publication state
Published
Issued date
18/07/2023
Peer-reviewed
Oui
Editor
Crimi Alessandro, Bakas Spyridon
Volume
13769
Series
Lecture Notes in Computer Science
Language
english
Abstract
Federated learning allows for training deep learning models from various sources (e.g., hospitals) without sharing patient information, but only the model weights. Two central problems arise when sending the updated weights to the central node in a federation: the imbalance of the datasets and data heterogeneity caused by differences in scanners or acquisition protocols. In this paper, we benchmark the federated average algorithm and adapt two weighting functions to counteract the effect of data imbalance. The approaches are validated on a segmentation task with synthetic data from imbalanced centers, and on two multi-centric datasets with the clinically relevant tasks of stroke infarct core prediction and brain tumor segmentation. The results show that accounting for the imbalance in the data sources improves the federated average aggregation in different perfusion CT and structural MRI images in the ISLES and BraTS19 datasets, respectively.
Create date
10/10/2022 9:50
Last modification date
21/02/2024 8:16
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