Abstract
Deep learning segmentation relies heavily on labeled data, but manual labeling is laborious and time-consuming, especially for volumetric images such as brain magnetic resonance imaging (MRI). While recent domain-randomization techniques alleviate the dependency on labeled data by synthesizing diverse training images from label maps, they offer limited anatomical variability when very few label maps are available. Semi-supervised self-training addresses label scarcity by iteratively incorporating m odel predictions into the training set, enabling networks to learn from unlabeled data. In this work, we combine domain randomization with self-training to train three-dimensional skull-stripping networks using as little as a single labeled example. First, we automatically bin voxel intensities, yielding labels we use to synthesize images for training an initial skull-stripping model. Second, we train a convolutional autoencoder (AE) on the labeled example and use its reconstruction error to assess the quality of brain masks predicted for unlabeled data. Third, we select the top-ranking pseudo-labels to fine-tune the network, achieving skull-stripping performance on out-of-distribution data that approaches models trained with more labeled images. We compare AE-based ranking to consistency-based ranking under test-time augmentation, finding that the AE approach yields a stronger correlation with segmentation accuracy. Our results highlight the potential of combining domain randomization and AE-based quality control to enable effective semi-supervised segmentation from extremely limited labeled data. This strategy may ease the labeling burden that slows progress in studies involving new anatomical structures or emerging imaging techniques.
| Original language | English |
|---|---|
| Title of host publication | Data Engineering in Medical Imaging - 3rd MICCAI Workshop, DEMI 2025, Held in Conjunction with MICCAI 2025, Proceedings |
| Editors | Binod Bhattarai, Anita Rau, Razvan Caramalau, Annika Reinke, Anh Nguyen, Ana Namburete, Prashnna Gyawali, Danail Stoyanov |
| Publisher | Springer Science and Business Media Deutschland GmbH |
| Pages | 42-52 |
| Number of pages | 11 |
| ISBN (Print) | 9783032080080 |
| DOIs | |
| State | Published - 2026 |
| Event | 3rd International Workshop on Data Engineering in Medical Imaging, DEMI 2025, Held in conjunction with the 28th International Conference on Medical Image Computing and Computer Assisted Intervention, MICCAI 2025 - Daejeon, Korea, Republic of Duration: 27 Sep 2025 → 27 Sep 2025 |
Publication series
| Name | Lecture Notes in Computer Science |
|---|---|
| Volume | 16191 LNCS |
| ISSN (Print) | 0302-9743 |
| ISSN (Electronic) | 1611-3349 |
Conference
| Conference | 3rd International Workshop on Data Engineering in Medical Imaging, DEMI 2025, Held in conjunction with the 28th International Conference on Medical Image Computing and Computer Assisted Intervention, MICCAI 2025 |
|---|---|
| Country/Territory | Korea, Republic of |
| City | Daejeon |
| Period | 27/09/25 → 27/09/25 |
Bibliographical note
Publisher Copyright:© The Author(s), under exclusive license to Springer Nature Switzerland AG 2026.
Keywords
- deep learning
- one-shot learning
- quality control
- segmentation
- self-training
- synthetic data
ASJC Scopus subject areas
- Theoretical Computer Science
- General Computer Science