aura-net : robust segmentation of phase-contrast microscopy images with few annotations
About
We present AURA-net, a convolutional neural network (CNN) for the segmentation of phase-contrast microscopy images. AURA-net uses transfer learning to accelerate training and Attention mechanisms to help the network focus on relevant image features. In this way, it can be trained efficiently with a very limited amount of annotations. Our network can thus be used to automate the segmentation of datasets that are generally considered too small for deep learning techniques. AURA-net also uses a loss inspired by active contours that is well-adapted to the specificity of phase-contrast images, further improving performance. We show that AURA-net outperforms state-of-the-art alternatives in several small (less than 100images) datasets.
Ethan Cohen, Virginie Uhlmann• 2021
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Medical Image Segmentation | ISIC 2018 | Dice Score89.92 | 139 | |
| Medical Image Segmentation | COVID-CT | Dice (%)79.28 | 45 | |
| Medical Image Segmentation | Breast Ultrasound | DSC (%)79.34 | 26 | |
| Medical Image Segmentation | BTMRI (Source) | DSC84.75 | 24 | |
| Medical Image Segmentation | Polyp Endoscopy | Dice Score90.53 | 18 | |
| Medical Image Segmentation | AMDSD OCT | Dice Score85.91 | 13 | |
| Medical Image Segmentation | EBHI Pathology | Dice Score95.08 | 13 | |
| Medical Image Segmentation | TNUI Ultrasound | Dice Score87.55 | 13 |
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