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CycleMix: A Holistic Strategy for Medical Image Segmentation from Scribble Supervision

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Curating a large set of fully annotated training data can be costly, especially for the tasks of medical image segmentation. Scribble, a weaker form of annotation, is more obtainable in practice, but training segmentation models from limited supervision of scribbles is still challenging. To address the difficulties, we propose a new framework for scribble learning-based medical image segmentation, which is composed of mix augmentation and cycle consistency and thus is referred to as CycleMix. For augmentation of supervision, CycleMix adopts the mixup strategy with a dedicated design of random occlusion, to perform increments and decrements of scribbles. For regularization of supervision, CycleMix intensifies the training objective with consistency losses to penalize inconsistent segmentation, which results in significant improvement of segmentation performance. Results on two open datasets, i.e., ACDC and MSCMRseg, showed that the proposed method achieved exhilarating performance, demonstrating comparable or even better accuracy than the fully-supervised methods. The code and expert-made scribble annotations for MSCMRseg are publicly available at https://github.com/BWGZK/CycleMix.

Ke Zhang, Xiahai Zhuang• 2022

Related benchmarks

TaskDatasetResultRank
Cardiac SegmentationACDC (test)
Avg Dice88.63
141
Medical Image SegmentationACDC (test)
Avg DSC88.6
135
Medical Image SegmentationMSCMRseg LGE MRI (test)
Dice (LV)87
20
Cardiac SegmentationMSCMRseg (test)
LV Dice87
14
Medical Image SegmentationMSCMRseg 25 scribbles
LV Segmentation Score87
10
Medical Image SegmentationMSCMRseg 5-scribble supervised (test)
Dice (LV)51.7
9
Medical Image SegmentationMSCMRseg 25 masks
LV Score86.4
5
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