正颌外科
计算机科学
手术计划
点云
人工智能
可视化
翻译(生物学)
计算机视觉
一致性(知识库)
特征(语言学)
旋转(数学)
图像配准
特征提取
放射治疗计划
外科手术
口腔正畸科
头影测量
临床实习
图像处理
点(几何)
刚性变换
作者
Yan Guo,Chenyao Li,Haitao Li,Weiwen Ge,Bolun Zeng,Jiaxuan Liu,Tianhao Wan,Shanyong Zhang,Xiaojun Chen
标识
DOI:10.1109/tip.2026.3651981
摘要
Orthognathic surgery demands precise preoperative planning to achieve optimal functional and aesthetic results, yet current practices remain labor-intensive and highly dependent on surgical expertise. To address these challenge, we propose OrthoPlanner, a novel two-stage framework for automated orthognathic surgical planning. In the first stage, we develop JawFormer, a shape sensitive transformer network that predicts postoperative bone morphology directly from preoperative 3D point cloud data. Built upon a point cloud encoder-decoder architecture, the network integrates anatomical priors through a region-based feature alignment module. This enables precise modeling of structural changes while preserving critical anatomical features. In the second stage, we introduce a symmetry-constrained rigid alignment algorithm that automatically outputs the precise translation and rotation of each osteotomized bone segment required to match the predicted morphology. This ensures bilateral anatomical consistency and facilitates interpretable surgical plans. Compared with existing approaches, our method achieves superior quantitative performance and enhanced visualization results, as demonstrated by 65 experiments on real clinical datasets. Moreover, OrthoPlanner significantly reduces planning time and manual workload, while ensuring reproducible and clinically acceptable outcomes.
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