Towards robust partially supervised multi-structure medical image segmentation on small-scale data
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https://hdl.handle.net/10037/26655Dato
2021-11-20Type
Journal articleTidsskriftartikkel
Peer reviewed
Forfatter
Dong, Nanqing; Kampffmeyer, Michael; Liang, Xiaodan; Xu, Min; Voiculescu, Irina; Xing, EricSammendrag
The data-driven nature of deep learning (DL) models for semantic segmentation requires a large
number of pixel-level annotations. However, large-scale and fully labeled medical datasets are often
unavailable for practical tasks. Recently, partially supervised methods have been proposed to utilize
images with incomplete labels in the medical domain. To bridge the methodological gaps in partially
supervised learning (PSL) under data scarcity, we propose Vicinal Labels Under Uncertainty (VLUU),
a simple yet efficient framework utilizing the human structure similarity for partially supervised
medical image segmentation. Motivated by multi-task learning and vicinal risk minimization, VLUU
transforms the partially supervised problem into a fully supervised problem by generating vicinal
labels. We systematically evaluate VLUU under the challenges of small-scale data, dataset shift,
and class imbalance on two commonly used segmentation datasets for the tasks of chest organ
segmentation and optic disc-and-cup segmentation. The experimental results show that VLUU can
consistently outperform previous partially supervised models in these settings. Our research suggests
a new research direction in label-efficient deep learning with partial supervision.
Forlag
ElsevierSitering
Dong, Kampffmeyer, Liang, Xu, Voiculescu, Xing. Towards robust partially supervised multi-structure medical image segmentation on small-scale data. Applied Soft Computing. 2022;114Metadata
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