FedDP: Privacy-preserving method based on federated learning for histopathology image segmentation
Liangrui Pan, Mao Huang, Lian Wang, Pinle Qin, Shaoliang Peng

TL;DR
FedDP combines federated learning with differential privacy to enable collaborative histopathology image segmentation across medical institutions, effectively protecting patient data while maintaining high model accuracy.
Contribution
This paper introduces FedDP, a novel privacy-preserving federated learning framework with differential privacy for medical image segmentation, addressing data privacy and security challenges.
Findings
Model accuracy decreases minimally with privacy measures
Effective protection against data reconstruction attacks
Facilitates cross-institutional collaboration in medical imaging
Abstract
Hematoxylin and Eosin (H&E) staining of whole slide images (WSIs) is considered the gold standard for pathologists and medical practitioners for tumor diagnosis, surgical planning, and post-operative assessment. With the rapid advancement of deep learning technologies, the development of numerous models based on convolutional neural networks and transformer-based models has been applied to the precise segmentation of WSIs. However, due to privacy regulations and the need to protect patient confidentiality, centralized storage and processing of image data are impractical. Training a centralized model directly is challenging to implement in medical settings due to these privacy concerns.This paper addresses the dispersed nature and privacy sensitivity of medical image data by employing a federated learning framework, allowing medical institutions to collaboratively learn while protecting…
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Taxonomy
TopicsAI in cancer detection · Privacy-Preserving Technologies in Data · Medical Imaging and Analysis
