An Unsupervised Approach for Artifact Severity Scoring in Multi-Contrast MR Images

Abstract

Quality assurance (QA) in magnetic resonance (MR) imaging is critical but remains a challenging and time-intensive process, particularly when working with large-scale, multi-site imaging datasets. Manual QA methods are subjective, prone to inter-rater variability, and impractical for high-throughput workflows. Existing automated QA methods often lack generalizability to diverse datasets or fail to provide interpretable insights into the causes of poor image quality. To address these limitations, we introduce an unsupervised and interpretable QA framework for multi-contrast MR images that quantifies artifact severity. By assigning a numerical score to each image, our method enables objective, consistent evaluation of image quality and highlights specific levels of artifact presence that can impair downstream analysis. Our framework employs an unsupervised contrastive learning approach, leveraging simulated artifact transformations, including random bias, noise, anisotropy, and ghosting, to train the model without requiring manual labels or preprocessing. A margin-based contrastive loss further enables differentiation between varying levels of artifact severity. We validate our framework using simulated artifacts on a public dataset and real artifacts on a private clinical dataset, demonstrating its robustness and generalizability for automatic MR image QA. By efficiently evaluating image quality and identifying artifacts prior to data processing, our approach streamlines QA workflows and enhances the reliability of subsequent analyses in both research and clinical settings.

Cite

Text

Hays et al. "An Unsupervised Approach for Artifact Severity Scoring in Multi-Contrast MR Images." Medical Imaging with Deep Learning, 2025.

Markdown

[Hays et al. "An Unsupervised Approach for Artifact Severity Scoring in Multi-Contrast MR Images." Medical Imaging with Deep Learning, 2025.](https://mlanthology.org/midl/2025/hays2025midl-unsupervised/)

BibTeX

@inproceedings{hays2025midl-unsupervised,
  title     = {{An Unsupervised Approach for Artifact Severity Scoring in Multi-Contrast MR Images}},
  author    = {Hays, Savannah and Zuo, Lianrui and Dewey, Blake E. and Remedios, Samuel and Zhang, Jinwei and Mowry, Ellen M. and Newsome, Scott D. and Carass, Aaron and Prince, Jerry L},
  booktitle = {Medical Imaging with Deep Learning},
  year      = {2025},
  url       = {https://mlanthology.org/midl/2025/hays2025midl-unsupervised/}
}