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OneSeg: Self-learning and One-shot Learning based Single-slice Annotation for 3D Medical Image Segmentation

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arxiv 2309.13671 v1 pith:DE3DR563 submitted 2023-09-24 cs.CV

OneSeg: Self-learning and One-shot Learning based Single-slice Annotation for 3D Medical Image Segmentation

classification cs.CV
keywords annotationimagemedicalsegmentationdatalearningone-shotself-learning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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As deep learning methods continue to improve medical image segmentation performance, data annotation is still a big bottleneck due to the labor-intensive and time-consuming burden on medical experts, especially for 3D images. To significantly reduce annotation efforts while attaining competitive segmentation accuracy, we propose a self-learning and one-shot learning based framework for 3D medical image segmentation by annotating only one slice of each 3D image. Our approach takes two steps: (1) self-learning of a reconstruction network to learn semantic correspondence among 2D slices within 3D images, and (2) representative selection of single slices for one-shot manual annotation and propagating the annotated data with the well-trained reconstruction network. Extensive experiments verify that our new framework achieves comparable performance with less than 1% annotated data compared with fully supervised methods and generalizes well on several out-of-distribution testing sets.

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