SingleStrip: Learning Skull-Stripping from a Single Labeled Example

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

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 languageEnglish
Title of host publicationData Engineering in Medical Imaging - 3rd MICCAI Workshop, DEMI 2025, Held in Conjunction with MICCAI 2025, Proceedings
EditorsBinod Bhattarai, Anita Rau, Razvan Caramalau, Annika Reinke, Anh Nguyen, Ana Namburete, Prashnna Gyawali, Danail Stoyanov
PublisherSpringer Science and Business Media Deutschland GmbH
Pages42-52
Number of pages11
ISBN (Print)9783032080080
DOIs
StatePublished - 2026
Event3rd 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 202527 Sep 2025

Publication series

NameLecture Notes in Computer Science
Volume16191 LNCS
ISSN (Print)0302-9743
ISSN (Electronic)1611-3349

Conference

Conference3rd 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/TerritoryKorea, Republic of
CityDaejeon
Period27/09/2527/09/25

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

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