RELICT: A Replica Detection Framework for Medical Image Generation
Orhun Utku Aydin (1), Alexander Koch (1), Adam Hilbert (1), Jana, Rieger (1), Felix Lohrke (1), Fujimaro Ishida (2), Satoru Tanioka (1, 3),, Dietmar Frey (1, 4) ((1) CLAIM - Charite Lab for AI in Medicine, Charite, Universitatsmedizin Berlin

TL;DR
RELICT is a comprehensive framework that detects nearly identical copies of training data in synthetic medical images, enhancing privacy and ethical standards in medical image generation.
Contribution
The paper introduces RELICT, a novel, multi-level replica detection framework for synthetic medical images, combining voxel, feature, and segmentation analyses.
Findings
Achieved perfect classification accuracy for head CT images.
Segment-level analysis correctly identified 79% of MRA replicas.
Framework provides a standardized tool for ethical medical image synthesis.
Abstract
Despite the potential of synthetic medical data for augmenting and improving the generalizability of deep learning models, memorization in generative models can lead to unintended leakage of sensitive patient information and limit model utility. Thus, the use of memorizing generative models in the medical domain can jeopardize patient privacy. We propose a framework for identifying replicas, i.e. nearly identical copies of the training data, in synthetic medical image datasets. Our REpLIca deteCTion (RELICT) framework for medical image generative models evaluates image similarity using three complementary approaches: (1) voxel-level analysis, (2) feature-level analysis by a pretrained medical foundation model, and (3) segmentation-level analysis. Two clinically relevant 3D generative modelling use cases were investigated: non-contrast head CT with intracerebral hemorrhage (N=774) and…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · AI in cancer detection · Advanced Neural Network Applications
