Single Dynamic Network for Multi-Label Renal Pathology Image Segmentation

Abstract

Computer-assisted quantitative analysis on Giga-pixel pathology images has provided a new avenue in histology examination. The innovations have been largely focused on cancer pathology (i.e., tumor segmentation and characterization). In non-cancer pathology, the learning algorithms can be asked to examine more comprehensive tissue types simultaneously, as a multi-label setting. The prior arts typically needed to train multiple segmentation networks in order to match the domain-specific knowledge for heterogeneous tissue types (e.g., glomerular tuft, glomerular unit, proximal tubular, distal tubular, peritubular capillaries, and arteries). In this paper, we propose a dynamic single segmentation network (Omni-Seg) that learns to segment multiple tissue types using partially labeled images (i.e., only one tissue type is labeled for each training image) for renal pathology. By learning from  150,000 patch-wise pathological images from six tissue types, the proposed Omni-Seg network achieved superior segmentation accuracy and less resource consumption when compared to the previous the multiple-network and multi-head design. In the testing stage, the proposed method obtains “completely labeled" tissue segmentation results using only “partially labeled" training images. The source code is available at \url{https://github.com/ddrrnn123/Omni-Seg}

Cite

Text

Deng et al. "Single Dynamic Network for Multi-Label Renal Pathology Image Segmentation." Medical Imaging with Deep Learning, 2023.

Markdown

[Deng et al. "Single Dynamic Network for Multi-Label Renal Pathology Image Segmentation." Medical Imaging with Deep Learning, 2023.](https://mlanthology.org/midl/2023/deng2023midl-single/)

BibTeX

@inproceedings{deng2023midl-single,
  title     = {{Single Dynamic Network for Multi-Label Renal Pathology Image Segmentation}},
  author    = {Deng, Ruining and Liu, Quan and Cui, Can and Asad, Zuhayr and Yang, Haichun and Huo, Yuankai},
  booktitle = {Medical Imaging with Deep Learning},
  year      = {2023},
  pages     = {304-314},
  volume    = {172},
  url       = {https://mlanthology.org/midl/2023/deng2023midl-single/}
}