Sparse annotation learning for dense volumetric MR image segmentation with uncertainty estimation.

sparse annotations uncertainty estimation volumetric MR image segmentation

Journal

Physics in medicine and biology
ISSN: 1361-6560
Titre abrégé: Phys Med Biol
Pays: England
ID NLM: 0401220

Informations de publication

Date de publication:
30 Nov 2023
Historique:
medline: 30 11 2023
pubmed: 30 11 2023
entrez: 30 11 2023
Statut: aheadofprint

Résumé

Training neural networks for pixel-wise or voxel-wise image segmentation is a challenging task that requires a considerable amount of training samples with highly accurate and densely delineated ground truth maps. This challenge becomes especially prominent in the medical imaging domain, where obtaining reliable annotations for training samples is a difficult, time-consuming, and expert-dependent process. Therefore, developing models that can perform well under the conditions of limited annotated training data is desirable. In this study, we propose an innovative framework called the extremely sparse annotation neural network (ESA-Net) that learns with only the single central slice label for 3D volumetric segmentation which explores both intra-slice pixel dependencies and inter-slice image correlations with uncertainty estimation. Specifically, ESA-Net consists of four specially designed distinct components: 1) an intra-slice pixel dependency-guided pseudo-label generation module that exploits uncertainty in network predictions while generating pseudo-labels for unlabeled slices with temporal ensembling; 2) an inter-slice image correlation-constrained pseudo-label propagation module which propagates labels from the labeled central slice to unlabeled slices by self-supervised registration with rotation ensembling; 3) a pseudo-label fusion module that fuses the two sets of generated pseudo-labels with voxel-wise uncertainty guidance; and 4) a final segmentation network optimization module to make final predictions with scoring-based label quantification. Extensive experimental validations have been performed on two popular yet challenging magnetic resonance image segmentation tasks and compared to five state-of-the-art methods. Results demonstrate that our proposed ESA-Net can consistently achieve better segmentation performances even under the extremely sparse annotation setting, highlighting its effectiveness in exploiting information from unlabeled data.

Identifiants

pubmed: 38035374
doi: 10.1088/1361-6560/ad111b
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Informations de copyright

© 2023 Institute of Physics and Engineering in Medicine.

Auteurs

Yousuf Babiker M Osman (YBM)

Shenzhen Institute of Advanced Technology Chinese Academy of Sciences, 1068 Xueyuan Avenue, Shenzhen University Town, Shenzhen, P.R, Shenzhen, 518055, CHINA.

Cheng Li (C)

Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences , 1068 Xueyuan Avenue, Shenzhen University Town, Shenzhen, P.R, Shenzhen, 518055, CHINA.

Weijian Huang (W)

Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, 1068 Xueyuan Avenue, Shenzhen University Town, Shenzhen, P.R, Shenzhen, 518066, CHINA.

Shanshan Wang (S)

Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, 1068 Xueyuan Avenue, Shenzhen University Town, Shenzhen, P.R, Chinese Academy of Sciences, Shenzhen, Select, 518066, CHINA.

Classifications MeSH