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Style Normalization In Histology With Federated Learning

2022-12-22 00:50| 来源: 网络整理| 查看: 265

来自 IEEE  喜欢 0

阅读量:

14

作者:

J Ke,Y Shen,Y Lu

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摘要:

The global cancer burden is on the rise, and Artificial Intelligence (AI) has become increasingly crucial to achieve more objective and efficient diagnosis in digital pathology. Current AI-assisted histopathology analysis methods need to address the following two issues. First, the color variations due to use of different stains need to be tackled such as with stain style transfer technique. Second, in parallel with heterogeneity, datasets from individual clinical institutions are characterized by privacy regulations, and thus need to be addressed such as with robust data-private collaborative training. In this paper, to address the color heterogeneity problem, we propose a novel generative adversarial network with one orchestrating generator and multiple distributed discriminators for stain style transfer. We also incorporate Federated Learning (FL) to further preserve data privacy and security from multiple data centers. We use a large cohort of histopathology datasets as a case study.

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关键词:

Training Data privacy Interpolation Histopathology Image color analysis Collaborative work Regulation

会议名称:

2021 IEEE 18th International Symposium on Biomedical Imaging (ISBI)

会议时间:

2021/04/13

主办单位:

IEEE



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