Dense Self-Supervised Learning for Medical Image Segmentation

Abstract

Deep learning has revolutionized medical image segmentation, but it relies heavily on high-quality annotations. The time, cost and expertise required to label images at the pixel-level for each new task has slowed down widespread adoption of the paradigm. We propose Pix2Rep, a self-supervised learning (SSL) approach for few-shot segmentation, that reduces the manual annotation burden by learning powerful pixel-level representations directly from unlabeled images. Pix2Rep is a novel pixel-level loss and pre-training paradigm for contrastive SSL on whole images. It is applied to generic encoder-decoder deep learning backbones (e.g., U-Net). Whereas most SSL methods enforce invariance of the learned image-level representations under intensity and spatial image augmentations, Pix2Rep enforces equivariance of the pixel-level representations. We demonstrate the framework on a task of cardiac MRI segmentation. Results show improved performance compared to existing semi- and self-supervised approaches; and a 5-fold reduction in the annotation burden for equivalent performance versus a fully supervised U-Net baseline. This includes a 30% (resp. 31%) DICE improvement for one-shot segmentation under linear-probing (resp. fine-tuning). Finally, we also integrate the novel Pix2Rep concept with the Barlow Twins non-contrastive SSL, which leads to even better segmentation performance.

Cite

Text

Seince et al. "Dense Self-Supervised Learning for Medical Image Segmentation." Proceedings of MIDL 2024, 2024.

Markdown

[Seince et al. "Dense Self-Supervised Learning for Medical Image Segmentation." Proceedings of MIDL 2024, 2024.](https://mlanthology.org/midl/2024/seince2024midl-dense/)

BibTeX

@inproceedings{seince2024midl-dense,
  title     = {{Dense Self-Supervised Learning for Medical Image Segmentation}},
  author    = {Seince, Maxime and Le Folgoc, Loı̈c and De Souza, Luiz Facury and Angelini, Elsa},
  booktitle = {Proceedings of MIDL 2024},
  year      = {2024},
  pages     = {1371-1386},
  volume    = {250},
  url       = {https://mlanthology.org/midl/2024/seince2024midl-dense/}
}