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Self-Learning to Detect and Segment Cysts in Lung CT Images without Manual Annotation

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arxiv 1801.08486 v1 pith:XC5MAGSI submitted 2018-01-25 cs.CV

Self-Learning to Detect and Segment Cysts in Lung CT Images without Manual Annotation

classification cs.CV
keywords learningsegmentationannotationdeepimagelungmedicalself-learning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Image segmentation is a fundamental problem in medical image analysis. In recent years, deep neural networks achieve impressive performances on many medical image segmentation tasks by supervised learning on large manually annotated data. However, expert annotations on big medical datasets are tedious, expensive or sometimes unavailable. Weakly supervised learning could reduce the effort for annotation but still required certain amounts of expertise. Recently, deep learning shows a potential to produce more accurate predictions than the original erroneous labels. Inspired by this, we introduce a very weakly supervised learning method, for cystic lesion detection and segmentation in lung CT images, without any manual annotation. Our method works in a self-learning manner, where segmentation generated in previous steps (first by unsupervised segmentation then by neural networks) is used as ground truth for the next level of network learning. Experiments on a cystic lung lesion dataset show that the deep learning could perform better than the initial unsupervised annotation, and progressively improve itself after self-learning.

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