Yoo Ji-Yong, Yang Su, Lim Sang-Heon, Han Ji Yong, Kim Jun-Min, Kim Jo-Eun, Huh Kyung-Hoe, Lee Sam-Sun, Heo Min-Suk, Yang Hoon Joo, Yi Won-Jin
Department of Biomedical Radiation Sciences, Graduate School of Convergence Science and Technology, Seoul National University, Seoul 08826, Republic of Korea.
Department of Applied Bioengineering, Graduate School of Convergence Science and Technology, Seoul National University, Seoul 08826, Republic of Korea.
Diagnostics (Basel). 2024 Dec 27;15(1):42. doi: 10.3390/diagnostics15010042.
: Accurate determination of the natural head position (NHP) is essential in orthognathic surgery for optimal surgical planning and improved patient outcomes. However, traditional methods encounter reproducibility issues and rely on external devices or patient cooperation, potentially leading to inaccuracies in the surgical plan. : To address these limitations, we developed a geometric deep learning network (NHP-Net) to automatically reproduce NHP from CT scans. A dataset of 150 orthognathic surgery patients was utilized. Three-dimensional skull meshes were converted into point clouds and normalized to fit within a unit sphere. NHP-Net was trained to predict a 3 × 3 rotation matrix to align the CT-acquired posture with the NHP. Experiments were conducted to determine optimal point cloud sizes and loss functions. Performance was evaluated using mean absolute error (MAE) for roll, pitch, and yaw angles, as well as a rotation error (RE) metric. : NHP-Net achieved the lowest RE of 1.918° ± 1.099° and demonstrated significantly lower MAEs in roll and pitch angles compared to other deep learning models ( < 0.05). These findings indicate that NHP-Net can accurately align CT-acquired postures to the NHP, enhancing the precision of surgical planning. : By effectively improving the accuracy and efficiency of NHP reproduction, NHP-Net reduces the workload of surgeons, supports more precise orthognathic surgical interventions, and ultimately contributes to better patient outcomes.
在正颌外科手术中,准确确定自然头位(NHP)对于优化手术规划和改善患者预后至关重要。然而,传统方法存在可重复性问题,且依赖外部设备或患者配合,这可能导致手术计划不准确。
为解决这些局限性,我们开发了一种几何深度学习网络(NHP-Net),用于从CT扫描中自动重现NHP。使用了一个包含150例正颌外科手术患者的数据集。将三维颅骨网格转换为点云并进行归一化处理,以使其适合在单位球体内。训练NHP-Net预测一个3×3旋转矩阵,以使CT获取的姿势与NHP对齐。进行了实验以确定最佳点云大小和损失函数。使用滚动角、俯仰角和偏航角的平均绝对误差(MAE)以及旋转误差(RE)指标来评估性能。
NHP-Net实现了最低的RE,为1.918°±1.099°,并且与其他深度学习模型相比,在滚动角和俯仰角方面的MAE显著更低(P<0.05)。这些结果表明,NHP-Net可以将CT获取的姿势准确地与NHP对齐,提高手术规划的精度。
通过有效提高NHP重现的准确性和效率,NHP-Net减轻了外科医生的工作量,支持更精确的正颌手术干预,并最终有助于改善患者预后。