Federated learning (FL) for medical image segmentation becomes more challenging in multi-task settings where clients might have different categories of labels represented in their data. For example, one client might have patient data with "healthy'' pancreases only while datasets from other clients may contain cases with pancreatic tumors. The vanilla federated averaging algorithm makes it possible to obtain more generalizable deep learning-based segmentation models representing the training data from multiple institutions without centralizing datasets. However, it might be sub-optimal for the aforementioned multi-task scenarios. In this paper, we investigate heterogeneous optimization methods that show improvements for the automated segmentation of pancreas and pancreatic tumors in abdominal CT images with FL settings.
@article{arxiv.2108.08537,
title = {Multi-task Federated Learning for Heterogeneous Pancreas Segmentation},
author = {Chen Shen and Pochuan Wang and Holger R. Roth and Dong Yang and Daguang Xu and Masahiro Oda and Weichung Wang and Chiou-Shann Fuh and Po-Ting Chen and Kao-Lang Liu and Wei-Chih Liao and Kensaku Mori},
journal= {arXiv preprint arXiv:2108.08537},
year = {2021}
}