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A review of deep learning-based Unsupervised Anomaly Detection in brain MRI.

April 15, 2026pubmed logopapers

Authors

Behrendt F,Bhattacharya D,Maack L,Krüger J,Opfer R,Schlaefer A

Affiliations (3)

  • Hamburg University of Technology, Am Schwarzenberg-Campus 1, Hamburg, 21073, Germany. Electronic address: [email protected].
  • Hamburg University of Technology, Am Schwarzenberg-Campus 1, Hamburg, 21073, Germany.
  • Jung Diagnostics GmbH, Röntgenstraße 24, Hamburg, 22335, Germany.

Abstract

The manual assessment of brain Magnetic Resonance Imaging (MRI) scans can be labor-intensive and time-consuming for radiologists. Deep Learning methods have demonstrated the potential to aid this process. However, their effectiveness relies on the availability of large, annotated data sets. Unsupervised Anomaly Detection (UAD) presents a promising alternative, offering the potential to identify and localize anomalies without per-pixel annotations. Instead, a normative distribution is learned using healthy data, enabling the identification of abnormalities as deviations. This allows UAD methods to detect abnormalities that were unseen during training. This appealing feature has led to numerous studies proposing innovations and novel approaches. In this work, we provide a review of the literature and systematically collect and compare the proposed approaches. We observe that UAD has made significant advancements in brain MRI analysis. However, individual approaches are often evaluated in different contexts, i.e., changes in acquisition parameters, pre- and post-processing, and anomaly scoring. This variability makes it challenging to assess which models perform best, underscoring the need for comprehensive comparative studies concerning the specific context of MRI scans. Our collection, featuring public data sets, research studies, and open implementations, is available at our GitHub repository https://github.com/FinnBehrendt/Unsupervised-Anomaly-Detection-in-Brain-MRI.

Topics

Journal ArticleReview

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