MR-CLIP: Efficient Metadata-Guided Learning of MRI Contrast Representations
Mehmet Yigit Avci, Pedro Borges, Paul Wright, Mehmet Yigitsoy, Sebastien Ourselin, Jorge Cardoso

TL;DR
MR-CLIP is a contrastive learning framework that aligns MRI images with DICOM metadata to learn contrast-aware representations, improving clinical image interpretation without manual labels.
Contribution
It introduces a novel multimodal contrastive learning approach that leverages metadata for MRI contrast representation without manual annotations.
Findings
Effective in cross-modal retrieval tasks
Accurately classifies MRI contrast types
Scalable to diverse clinical datasets
Abstract
Accurate interpretation of Magnetic Resonance Imaging scans in clinical systems is based on a precise understanding of image contrast. This contrast is primarily governed by acquisition parameters, such as echo time and repetition time, which are stored in the DICOM metadata. To simplify contrast identification, broad labels such as T1-weighted or T2-weighted are commonly used, but these offer only a coarse approximation of the underlying acquisition settings. In many real-world datasets, such labels are entirely missing, leaving raw acquisition parameters as the only indicators of contrast. Adding to this challenge, the available metadata is often incomplete, noisy, or inconsistent. The lack of reliable and standardized metadata complicates tasks such as image interpretation, retrieval, and integration into clinical workflows. Furthermore, robust contrast-aware representations are…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Fetal and Pediatric Neurological Disorders · Generative Adversarial Networks and Image Synthesis
