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Multi-Task Attention-Based Semi-Supervised Learning for Medical Image Segmentation

About

We propose a novel semi-supervised image segmentation method that simultaneously optimizes a supervised segmentation and an unsupervised reconstruction objectives. The reconstruction objective uses an attention mechanism that separates the reconstruction of image areas corresponding to different classes. The proposed approach was evaluated on two applications: brain tumor and white matter hyperintensities segmentation. Our method, trained on unlabeled and a small number of labeled images, outperformed supervised CNNs trained with the same number of images and CNNs pre-trained on unlabeled data. In ablation experiments, we observed that the proposed attention mechanism substantially improves segmentation performance. We explore two multi-task training strategies: joint training and alternating training. Alternating training requires fewer hyperparameters and achieves a better, more stable performance than joint training. Finally, we analyze the features learned by different methods and find that the attention mechanism helps to learn more discriminative features in the deeper layers of encoders.

Shuai Chen, Gerda Bortsova, Antonio Garcia-Uceda Juarez, Gijs van Tulder, Marleen de Bruijne• 2019

Related benchmarks

TaskDatasetResultRank
Vessel segmentationCHASE DB1
DSC0.7382
35
Vascular Image SegmentationFOS-OCTA500
DSC79.28
25
Vascular Image SegmentationFTS-OCT
DSC74.65
24
Vascular Image SegmentationFBS-DIAS
DSC69.31
24
Vascular Image SegmentationFBS-DSCA
DSC72.28
24
Vascular Image SegmentationFVS-DRIVE
DSC72.54
24
Vascular Image SegmentationFVS-HRF
DSC60.91
24
Vascular Image SegmentationFVS-ORVS
DSC49.79
24
Vascular Image SegmentationFCS-SBCD
DSC78.86
13
Vascular Image SegmentationFCS-XACD
DSC70.34
13
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