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Geometric Visual Similarity Learning in 3D Medical Image Self-supervised Pre-training

About

Learning inter-image similarity is crucial for 3D medical images self-supervised pre-training, due to their sharing of numerous same semantic regions. However, the lack of the semantic prior in metrics and the semantic-independent variation in 3D medical images make it challenging to get a reliable measurement for the inter-image similarity, hindering the learning of consistent representation for same semantics. We investigate the challenging problem of this task, i.e., learning a consistent representation between images for a clustering effect of same semantic features. We propose a novel visual similarity learning paradigm, Geometric Visual Similarity Learning, which embeds the prior of topological invariance into the measurement of the inter-image similarity for consistent representation of semantic regions. To drive this paradigm, we further construct a novel geometric matching head, the Z-matching head, to collaboratively learn the global and local similarity of semantic regions, guiding the efficient representation learning for different scale-level inter-image semantic features. Our experiments demonstrate that the pre-training with our learning of inter-image similarity yields more powerful inner-scene, inter-scene, and global-local transferring ability on four challenging 3D medical image tasks. Our codes and pre-trained models will be publicly available on https://github.com/YutingHe-list/GVSL.

Yuting He, Guanyu Yang, Rongjun Ge, Yang Chen, Jean-Louis Coatrieux, Boyu Wang, Shuo Li• 2023

Related benchmarks

TaskDatasetResultRank
Medical Image SegmentationMM-WHS (test)
Dice Score88.27
62
Multi-organ SegmentationBTCV (test)
Spl95.27
55
Brain Tumor SegmentationBraTS PED 2023 (test)
HD95 (ET)17.45
34
SegmentationBraTS MET 2023 (test)
HD95 (ET)37.33
34
SegmentationISLES 2022 (test)
HD95 (IS)9.35
34
Medical Image SegmentationMSD Spleen (test)
Dice Score95.47
18
ClassificationBraTS 2018 (test)
ACC78.95
17
ClassificationABIDE-I 14 (test)
Accuracy62.42
17
SegmentationUPENN-GBM (test)
HD95 (ET)2.23
17
ClassificationADHD-200 11 (test)
Accuracy66.23
17
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