Diverse data augmentation for learning image segmentation with cross-modality annotations
•We propose a novel cross-modality medical image segmentation method.•Our model can perform segmentation for a target domain without labeled training data.•A diverse data augmentation approach is used to augment the training data for segmentation.•Experiments in two different tasks demonstrate the e...
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Veröffentlicht in: | Medical image analysis 2021-07, Vol.71, p.102060-102060, Article 102060 |
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Sprache: | eng |
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Zusammenfassung: | •We propose a novel cross-modality medical image segmentation method.•Our model can perform segmentation for a target domain without labeled training data.•A diverse data augmentation approach is used to augment the training data for segmentation.•Experiments in two different tasks demonstrate the effectiveness of proposed method.
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The dearth of annotated data is a major hurdle in building reliable image segmentation models. Manual annotation of medical images is tedious, time-consuming, and significantly variable across imaging modalities. The need for annotation can be ameliorated by leveraging an annotation-rich source modality in learning a segmentation model for an annotation-poor target modality. In this paper, we introduce a diverse data augmentation generative adversarial network (DDA-GAN) to train a segmentation model for an unannotated target image domain by borrowing information from an annotated source image domain. This is achieved by generating diverse augmented data for the target domain by one-to-many source-to-target translation. The DDA-GAN uses unpaired images from the source and target domains and is an end-to-end convolutional neural network that (i) explicitly disentangles domain-invariant structural features related to segmentation from domain-specific appearance features, (ii) combines structural features from the source domain with appearance features randomly sampled from the target domain for data augmentation, and (iii) train the segmentation model with the augmented data in the target domain and the annotations from the source domain. The effectiveness of our method is demonstrated both qualitatively and quantitatively in comparison with the state of the art for segmentation of craniomaxillofacial bony structures via MRI and cardiac substructures via CT. |
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ISSN: | 1361-8415 1361-8423 |
DOI: | 10.1016/j.media.2021.102060 |