FracFormer:基于变压器形状恢复和裂缝数据模拟的裂缝减少规划

Sutuke Yibulayimu;Yanzhen Liu;Yudi Sang;Jingjiang Qin;Chao Shi;Chendi Liang;Gang Zhu;Yu Wang;Chunpeng Zhao;Xinbao Wu
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引用次数: 0

摘要

准确的骨科骨折复位计划对于确保成功的术后恢复和改善患者预后至关重要。然而,目前的自动化方法受到复杂和不规则的裂缝几何形状以及缺乏带注释的训练数据的挑战。为了解决这些挑战,我们提出了一种结合基于学习的形状恢复和断裂模拟的新方法。建立了一种基于变压器的模型,该模型利用斑块到斑块的形状平移和递归碎片配准来迭代地优化裂缝复位姿势。可变形骨折生成模型(DFGM)将统计形状建模与临床代表性骨折模式相结合,生成多样化和真实的数据集,减少对注释样本的依赖。对髋骨、骶骨和股骨干骨折的大量临床数据进行了测试,该方法的平均误差为1.85 mm和3.40°,优于基于模板和现有的基于学习的方法。此外,仅使用dfgm合成数据训练的模型对真实临床数据具有较强的通用性。烧蚀实验验证了碎片感知网络管道和合成步骤的有效性。最后,基于损伤前扫描得出的地面真实值的尸体研究进一步验证了该方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FracFormer: Fracture Reduction Planning With Transformer-Based Shape Restoration and Fracture Data Simulation
Accurate orthopedic fracture reduction planning is essential for ensuring successful postoperative recovery and improving patient outcomes. However, current automatic methods are challenged by the complex and irregular fracture geometries and the scarcity of annotated training data. To address these challenges, we propose a novel approach that integrates learning-based shape restoration and fracture simulation. A transformer-based model is developed, which utilizes patch-to-patch shape translation and recursive fragment registration to iteratively refine fracture reduction poses. A deformable fracture generation model (DFGM) combines statistical shape modeling with clinically representative fracture patterns to generate diverse and realistic datasets, reducing the dependence on annotated samples. Tested on extensive clinical data with hipbone, sacrum, and femoral shaft fractures, the proposed method achieved mean errors of 1.85 mm and 3.40°, outperforming both template-based and existing learning-based methods. In addition, models trained solely on DFGM-synthesized data presented strong generalizability to real clinical data. The ablation experiments demonstrate the effectiveness of the fragment-aware network pipeline and the synthesis steps. Finally, a cadaver study with ground truth derived from the pre-injury scan further validated the performance of the method.
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