Fan Yifeng, Yao Xufeng, Hu Tingting, Xu Xiufang
From School of Medical Imaging, HangZhou Medical College, Hangzhou.
College of Medical Imaging, Shanghai University of Medicine & Healthy Science, Shanghai, China.
J Craniofac Surg. 2019 Jun;30(4):e344-e350. doi: 10.1097/SCS.0000000000005330.
This study aimed to investigate the feasibility of an automatic marker-free patient-to-image spatial registration method based on the 4-points congruent sets (4PCS) and iterative closest point (ICP) algorithm for the image-guided neurosurgery system (IGNS).
A portable scanner was used to obtain the point cloud of the patient's entire head. The 4PCS algorithm, which is resilient to noise and outliers, automatically registered the point cloud in the patient space to the surface reconstructed from the patient's preoperative images in the image space without any assumptions about initial alignment. A variant of the ICP algorithm was then used to finish the fine registration. Two phantoms and 3 patients' experiments were performed to demonstrate the effectiveness of the proposed method.
In the phantom experiments, the mean target registration error of 15 targets on the surface of the rigid and the elastic phantoms were 1.02 ± 0.18 mm and 1.27 ± 0.36 mm, respectively. In the clinical experiments, the mean target registration error of 7 targets on the first, second and third patient's head were 1.88 ± 0.19 mm, 1.84 ± 0.19 mm, and 1.89 ± 0.18 mm, respectively, which was sufficient to meet clinical requirements. The registration accuracy and registration time using the proposed method are better than that using the method based on manually coarse registration and automatic fine registration.
It is feasible to use the automatic spatial registration method based on the 4PCS and ICP algorithm for the IGNS. Moreover, it can replace the spatial registration method based on manually selected anatomical landmarks combined with the automatic fine registration in the currently used IGNS.
本研究旨在探讨基于四点全等集(4PCS)和迭代最近点(ICP)算法的自动无标记患者到图像空间配准方法在图像引导神经外科手术系统(IGNS)中的可行性。
使用便携式扫描仪获取患者整个头部的点云。4PCS算法对噪声和离群值具有鲁棒性,可在无需对初始对齐做任何假设的情况下,将患者空间中的点云自动配准到由患者术前图像在图像空间中重建的表面。然后使用ICP算法的一个变体完成精细配准。进行了两个模型和3例患者的实验以证明所提方法的有效性。
在模型实验中,刚性和弹性模型表面15个靶点的平均目标配准误差分别为1.02±0.18毫米和1.27±0.36毫米。在临床实验中,第一、第二和第三位患者头部7个靶点的平均目标配准误差分别为1.88±0.19毫米、1.84±0.19毫米和1.89±0.18毫米,足以满足临床要求。所提方法的配准精度和配准时间优于基于手动粗配准和自动精细配准的方法。
基于4PCS和ICP算法的自动空间配准方法用于IGNS是可行的。此外,它可以替代当前使用的IGNS中基于手动选择解剖标志点并结合自动精细配准的空间配准方法。