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Interactive Thyroid Whole Slide Image Diagnostic System using Deep Representation

Intro

With the aim of computer-aided diagnosis and the insights that suspicious regions are generally easy to identify, we develop an interactive histopathology whole slide image diagnostic system based on the suspicious regions preselected by pathologists. We propose to generate the feature representation for these suspicious regions via extracting and fusing patch features using deep neural networks. The pipeline of the proposed system is shown as below:

roi_wsi_system

Methods

1.1 patchCLS

  • Patch classifier for feature extraction.

1.2 genFeas

  • Generate the representation for these suspicious regions for following analysis.

1.3 roiCLS

  • Diagnose the suspicious region

1.4 retrieval

  • Retrieve similar regions for reference

Citation

Please consider cite the paper if this repository facilitates your research.

@article{chen2020interactive,
  title={Interactive Thyroid Whole Slide Image Diagnostic System using Deep Representation},
  author={Chen, Pingjun and Shi, Xiaoshuang and Liang, Yun and Li, Yuan and Yang, Lin and Gader, Paul D},
  journal={Computer Methods and Programs in Biomedicine},
  volume={195},
  pages={105630},
  year={2020},
  doi={https://doi.org/10.1016/j.cmpb.2020.105630},
  publisher={Elsevier}
}