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arXiv 提交日期: 2026-04-30
📄 Abstract - MSR:Hybrid Field Modeling for CT-MRI Rigid-Deformable Registration of the Cervical Spine with an Annotated Dataset

Accurate CT-MRI registration of the cervical spine is essential for preoperative planning because this region is anatomically complex,highly variable,and vulnerable to injury of the vertebral arteries and spinal cord. However,cervical CT-MRI registration remains underexplored,particularly for rigid-deformable hybrid modeling,and the lack of high-quality annotated multimodal data further limits progress. To address these challenges, we construct and release a comprehensively annotated CT-MRI dataset, R-D-Reg, and propose MSR, a rigid-deformable hybrid registration framework for complex joint structures. Specifically, MSR includes a rigid registration module for independent local rigid alignment of individual vertebrae and a deformable registration module with an MSL block that combines Mamba-based global modeling and Swin Transformer-based local modeling through adaptive gating. The rigid and deformable deformation fields are then fused to generate a hybrid field that better preserves local anatomical consistency. The code and dataset are publicly available at this https URL.

顶级标签: medical machine learning multi-modal
详细标签: medical image registration ct-mri registration rigid-deformable hybrid cervical spine dataset 或 搜索:

MSR:面向颈椎CT-MRI刚柔混合配准的混合场建模及标注数据集 / MSR:Hybrid Field Modeling for CT-MRI Rigid-Deformable Registration of the Cervical Spine with an Annotated Dataset


1️⃣ 一句话总结

本文提出了一个名为MSR的刚柔混合配准框架,通过融合刚性对齐与可变形建模,并结合自研的CT-MRI标注数据集,有效解决了颈椎区域医学图像配准中局部结构保真度与全局一致性难以兼得的问题。

源自 arXiv: 2604.27654