GuidedMorph: Two-Stage Deformable Registration for Breast MRI
Yaqian Chen, Hanxue Gu, Haoyu Dong, Qihang Li, Yuwen Chen, Nicholas Konz, Lin Li, Maciej A. Mazurowski

TL;DR
GuidedMorph is a novel two-stage deformable registration framework for breast MRI that improves alignment accuracy of dense tissue and internal structures, aiding better tumor tracking and diagnosis.
Contribution
It introduces a dual-stage registration framework with a Dense Tissue tracking module and a novel warping method, enhancing accuracy over existing methods.
Findings
Over 13% improvement in dense tissue Dice score
3% improvement in breast Dice score
1.2% increase in breast SSIM
Abstract
Accurately registering breast MR images from different time points enables the alignment of anatomical structures and tracking of tumor progression, supporting more effective breast cancer detection, diagnosis, and treatment planning. However, the complexity of dense tissue and its highly non-rigid nature pose challenges for conventional registration methods, which primarily focus on aligning general structures while overlooking intricate internal details. To address this, we propose \textbf{GuidedMorph}, a novel two-stage registration framework designed to better align dense tissue. In addition to a single-scale network for global structure alignment, we introduce a framework that utilizes dense tissue information to track breast movement. The learned transformation fields are fused by introducing the Dual Spatial Transformer Network (DSTN), improving overall alignment accuracy. A…
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Taxonomy
MethodsAttention Is All You Need · Linear Layer · Multi-Head Attention · Dense Connections · Layer Normalization · Focus · Byte Pair Encoding · Label Smoothing · Adam · Softmax
