MGRegBench: A Novel Benchmark Dataset with Anatomical Landmarks for Mammography Image Registration
Svetlana Krasnova, Emiliya Starikova, Ilia Naletov, Andrey Krylov, Dmitry Sorokin

TL;DR
MGRegBench introduces a large, publicly available dataset with anatomical landmarks for mammography image registration, enabling fair comparison of methods and advancing research in this critical clinical area.
Contribution
It provides the first large-scale public dataset with manual annotations for mammography registration and offers a comprehensive benchmark for diverse registration methods.
Findings
Classical, learning-based, and neural methods evaluated
Deep learning methods show promising results but vary in accuracy
Benchmarking reveals strengths and limitations of current approaches
Abstract
Robust mammography registration is essential for clinical applications like tracking disease progression and monitoring longitudinal changes in breast tissue. However, progress has been limited by the absence of public datasets and standardized benchmarks. Existing studies are often not directly comparable, as they use private data and inconsistent evaluation frameworks. To address this, we present MGRegBench, a public benchmark dataset for mammogram registration. It comprises over 5,000 image pairs, with 100 containing manual anatomical landmarks and segmentation masks for rigorous evaluation. This makes MGRegBench one of the largest public 2D registration datasets with manual annotations. Using this resource, we benchmarked diverse registration methods including classical (ANTs), learning-based (VoxelMorph, TransMorph), implicit neural representation (IDIR), a classic…
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Taxonomy
TopicsAI in cancer detection · Digital Radiography and Breast Imaging · Advanced Radiotherapy Techniques
