Parallel Swin Transformer-Enhanced 3D MRI-to-CT Synthesis for MRI-Only Radiotherapy Planning
AI 摘要
提出一种基于并行Swin Transformer的3D MRI合成CT方法,用于MRI引导的放疗计划。
主要贡献
- 提出并行Swin Transformer增强的Med2Transformer架构
- 利用双Swin Transformer分支建模局部细节和长程依赖
- 在公开和临床数据集上验证了方法的有效性
方法论
结合卷积编码和双Swin Transformer分支,通过多尺度移位窗口注意力进行特征聚合,提升解剖结构保真度。
原文摘要
MRI provides superior soft tissue contrast without ionizing radiation; however, the absence of electron density information limits its direct use for dose calculation. As a result, current radiotherapy workflows rely on combined MRI and CT acquisitions, increasing registration uncertainty and procedural complexity. Synthetic CT generation enables MRI only planning but remains challenging due to nonlinear MRI-CT relationships and anatomical variability. We propose Parallel Swin Transformer-Enhanced Med2Transformer, a 3D architecture that integrates convolutional encoding with dual Swin Transformer branches to model both local anatomical detail and long-range contextual dependencies. Multi-scale shifted window attention with hierarchical feature aggregation improves anatomical fidelity. Experiments on public and clinical datasets demonstrate higher image similarity and improved geometric accuracy compared with baseline methods. Dosimetric evaluation shows clinically acceptable performance, with a mean target dose error of 1.69%. Code is available at: https://github.com/mobaidoctor/med2transformer.