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IEEE ISBI 2022 paper: CEUSegNet: A Cross-Modality Lesion Segmentation Network for Contrast-Enhanced Ultrasound.

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CEUSegNet

    IEEE ISBI 2022 paper: CEUSegNet: A Cross-Modality Lesion Segmentation Network for Contrast-Enhanced Ultrasound, a cooperation achievement by researchers from Institute of Automation CAS and Lanzhou University Second Hospital.

overview

How to start?

Modify datadir to your data path first and then run the file train_helper.py.

Highlights

  • Contrast-Enhanced Ultrasound (CEUS) usually presents two modalities on video frames at the same time, i.e. ultrasound part and contrast-enhanced part.
  • We can determine a rough location for lesion on ultrasound part and then finely sketch the region of interest on contrast-enhanced part.
  • In this way, a video segmentation task can be converted into a frame segmentation task.

Demos

result

    Our work can achieve a comparable performance with clinicians on breast lesion and cervical lymphadenopathy segmentation task. More details can refer to our paper.

Inference-time

Input size Time (ms) MACs(G) Params(M)
128 * 128 20.82±2.62 12.74 9.281
375 * 375 (origin) 68.51±0.41 108.51 9.281

Acknowledgement

    Our code is based on Pytorch-UNet. Thanks!

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IEEE ISBI 2022 paper: CEUSegNet: A Cross-Modality Lesion Segmentation Network for Contrast-Enhanced Ultrasound.

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