Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
139 tokens/sec
GPT-4o
47 tokens/sec
Gemini 2.5 Pro Pro
43 tokens/sec
o3 Pro
4 tokens/sec
GPT-4.1 Pro
47 tokens/sec
DeepSeek R1 via Azure Pro
28 tokens/sec
2000 character limit reached

Semi- and Weakly-Supervised Learning for Mammogram Mass Segmentation with Limited Annotations (2403.09315v1)

Published 14 Mar 2024 in cs.CV

Abstract: Accurate identification of breast masses is crucial in diagnosing breast cancer; however, it can be challenging due to their small size and being camouflaged in surrounding normal glands. Worse still, it is also expensive in clinical practice to obtain adequate pixel-wise annotations for training deep neural networks. To overcome these two difficulties with one stone, we propose a semi- and weakly-supervised learning framework for mass segmentation that utilizes limited strongly-labeled samples and sufficient weakly-labeled samples to achieve satisfactory performance. The framework consists of an auxiliary branch to exclude lesion-irrelevant background areas, a segmentation branch for final prediction, and a spatial prompting module to integrate the complementary information of the two branches. We further disentangle encoded obscure features into lesion-related and others to boost performance. Experiments on CBIS-DDSM and INbreast datasets demonstrate the effectiveness of our method.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (23)
  1. “Global cancer statistics 2020: Globocan estimates of incidence and mortality worldwide for 36 cancers in 185 countries,” CA: a cancer journal for clinicians, vol. 71, no. 3, pp. 209–249, 2021.
  2. “Bilateral asymmetry guided counterfactual generating network for mammogram classification,” IEEE Transactions on Image Processing, vol. 30, pp. 7980–7994, 2021.
  3. “Br-gan: Bilateral residual generating adversarial network for mammogram classification,” in MICCAI. Springer, 2020, pp. 657–666.
  4. “Dae-gcn: Identifying disease-related features for disease prediction,” in MICCAI. Springer, 2021, pp. 43–52.
  5. “Disentangling disease-related representation from obscure for disease prediction,” in ICML. PMLR, 2022, pp. 22652–22664.
  6. “Learning domain-agnostic representation for disease diagnosis,” in ICLR, 2022.
  7. “The benefits and harms of breast cancer screening: an independent review,” British journal of cancer, vol. 108, no. 11, pp. 2205–2240, 2013.
  8. “Aunet: Attention-guided dense-upsampling networks for breast mass segmentation in whole mammograms,” Physics in Medicine & Biology, vol. 65, no. 5, pp. 055005, 2020.
  9. “Fs-unet: Mass segmentation in mammograms using an encoder-decoder architecture with feature strengthening,” Computers in Biology and Medicine, vol. 137, pp. 104800, 2021.
  10. “Mammo-sam: Adapting foundation segment anything model for automatic breast mass segmentation in whole mammograms,” in MLMI. Springer, 2023, pp. 176–185.
  11. “Learning pseudo labels for semi-and-weakly supervised semantic segmentation,” Pattern Recognition, vol. 132, pp. 108925, 2022.
  12. “Label-efficient hybrid-supervised learning for medical image segmentation,” in AAAI, 2022, vol. 36, pp. 2026–2034.
  13. “Hybridvps: Hybrid-supervised video polyp segmentation under low-cost labels,” IEEE Signal Processing Letters, 2023.
  14. “Enhanced soft label for semi-supervised semantic segmentation,” in ICCV, 2023, pp. 1185–1195.
  15. “Semi-supervised semantic segmentation via strong-weak dual-branch network,” in ECCV. Springer, 2020, pp. 784–800.
  16. “Semi-supervised semantic image segmentation with self-correcting networks,” in CVPR, 2020, pp. 12715–12725.
  17. “Deep residual learning for image recognition,” in CVPR, 2016, pp. 770–778.
  18. “U-net: Convolutional networks for biomedical image segmentation,” in MICCAI. Springer, 2015, pp. 234–241.
  19. “F33{}^{3}start_FLOATSUPERSCRIPT 3 end_FLOATSUPERSCRIPTnet: Fusion, feedback and focus for salient object detection,” in AAAI, 2020, vol. 34, pp. 12321–12328.
  20. “A curated mammography data set for use in computer-aided detection and diagnosis research,” Scientific data, vol. 4, no. 1, pp. 1–9, 2017.
  21. “Inbreast: toward a full-field digital mammographic database,” Academic radiology, vol. 19, no. 2, pp. 236–248, 2012.
  22. “A macro-micro weakly-supervised framework for as-oct tissue segmentation,” in MICCAI. Springer, 2020, pp. 725–734.
  23. “Structure-measure: A new way to evaluate foreground maps,” in ICCV, 2017, pp. 4548–4557.

Summary

We haven't generated a summary for this paper yet.