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Federated learning with knowledge distillation for multi-organ segmentation with partially labeled datasets
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Title
Federated learning with knowledge distillation for multi-organ segmentation with partially labeled datasets
Issued Date
2024-07
Citation
Kim, Soopil. (2024-07). Federated learning with knowledge distillation for multi-organ segmentation with partially labeled datasets. Medical Image Analysis, 95. doi: 10.1016/j.media.2024.103156
Type
Article
Author Keywords
Multi-organ segmentationFederated learningPartially labeled datasetsKnowledge distillation
ISSN
1361-8415
Abstract
The state-of-the-art multi-organ CT segmentation relies on deep learning models, which only generalize when trained on large samples of carefully curated data. However, it is challenging to train a single model that can segment all organs and types of tumors since most large datasets are partially labeled or are acquired across multiple institutes that may differ in their acquisitions. A possible solution is Federated learning, which is often used to train models on multi-institutional datasets where the data is not shared across sites. However, predictions of federated learning can be unreliable after the model is locally updated at sites due to ‘catastrophic forgetting’. Here, we address this issue by using knowledge distillation (KD) so that the local training is regularized with the knowledge of a global model and pre-trained organ-specific segmentation models. We implement the models in a multi-head U-Net architecture that learns a shared embedding space for different organ segmentation, thereby obtaining multi-organ predictions without repeated processes. We evaluate the proposed method using 8 publicly available abdominal CT datasets of 7 different organs. Of those datasets, 889 CTs were used for training, 233 for internal testing, and 30 volumes for external testing. Experimental results verified that our proposed method substantially outperforms other state-of-the-art methods in terms of accuracy, inference time, and the number of parameters. © 2024 Elsevier B.V.
URI
http://hdl.handle.net/20.500.11750/57039
DOI
10.1016/j.media.2024.103156
Publisher
Elsevier
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