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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Medical Image Segmentation | MM-WHS (test) | Dice Score88.27 | 62 | |
| Multi-organ Segmentation | BTCV (test) | Spl95.27 | 55 | |
| Brain Tumor Segmentation | BraTS PED 2023 (test) | HD95 (ET)17.45 | 34 | |
| Segmentation | BraTS MET 2023 (test) | HD95 (ET)37.33 | 34 | |
| Segmentation | ISLES 2022 (test) | HD95 (IS)9.35 | 34 | |
| Medical Image Segmentation | MSD Spleen (test) | Dice Score95.47 | 18 | |
| Classification | BraTS 2018 (test) | ACC78.95 | 17 | |
| Classification | ABIDE-I 14 (test) | Accuracy62.42 | 17 | |
| Segmentation | UPENN-GBM (test) | HD95 (ET)2.23 | 17 | |
| Classification | ADHD-200 11 (test) | Accuracy66.23 | 17 |