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Annotation-efficient deep learning for automatic medical image segmentation.

Shanshan WangCheng LiRongpin WangZhenyu LiuMeiyun WangHongna TanYaping WuXinfeng LiuHui SunRui YangXin LiuJie ChenHuihui ZhouIsmail Ben AyedHairong Zheng
Published in: Nature communications (2021)
Automatic medical image segmentation plays a critical role in scientific research and medical care. Existing high-performance deep learning methods typically rely on large training datasets with high-quality manual annotations, which are difficult to obtain in many clinical applications. Here, we introduce Annotation-effIcient Deep lEarning (AIDE), an open-source framework to handle imperfect training datasets. Methodological analyses and empirical evaluations are conducted, and we demonstrate that AIDE surpasses conventional fully-supervised models by presenting better performance on open datasets possessing scarce or noisy annotations. We further test AIDE in a real-life case study for breast tumor segmentation. Three datasets containing 11,852 breast images from three medical centers are employed, and AIDE, utilizing 10% training annotations, consistently produces segmentation maps comparable to those generated by fully-supervised counterparts or provided by independent radiologists. The 10-fold enhanced efficiency in utilizing expert labels has the potential to promote a wide range of biomedical applications.
Keyphrases
  • deep learning
  • convolutional neural network
  • artificial intelligence
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  • rna seq
  • healthcare
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  • optical coherence tomography
  • climate change