通过 CT 图像自动测量中心点角度,用于机器人辅助螺杆-螺柱系统植入术的术前螺杆设计

IF 3.4 Q2 ENGINEERING, BIOMEDICAL
Jiajing Zhang;Wenqing Zhang;Haodong Liu;Yingying Liu;Ningning Chen;Jianjia Zhang;Changhong Wang
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引用次数: 0

摘要

机器人辅助植入螺杆系统是治疗脊柱疾病的先进疗法。螺杆和脊柱之间的精确曲率配合对于术后脊柱的稳定性至关重要。目前,杆的曲率是根据螺钉的位置在术中确定的,这很难达到最佳的杆弯曲效果,而且容易受到外科医生专业知识的影响。为了应对这一挑战,我们提出了一种自动、高效的方法,通过 CT 图像测量中心点角度来指导术前的杆设计。中心角由上下椎体对中心点的连接线定义,为脊柱畸形提供了可靠的测量方法。拟议的管道包括:(1)利用多尺度多任务深度学习进行三维脊柱分割;(2)利用图形形态学进行椎体识别;(3)自动、可重复的中心角测量。我们的方法在健康和病理脊柱上进行了评估。与专业外科医生的人工测量相比,我们的方法在相邻和非相邻椎体上的准确率分别达到 94.50% 和 91.93%。我们还建立了一个基于 Slicer 的插件,用于机器人辅助螺钉连杆系统植入,为个性化螺钉连杆系统提供了新的临床工具,使其符合脊柱的自然弯曲度,从而提高生物力学特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Centroid Angle Measurement From CT Image for Preoperative Rod Design of Robotic-Assisted Screw-Rod System Implantation
Robotic-assisted implantation of screw-rod systems serves as an advanced therapy for spinal diseases. A precise curvature fit between rods and spines is critical to postoperative spinal stability. Currently, rod curvature is determined intraoperatively to accommodate screw positions, which is hardly conducive to optimal rod bending and is vulnerable to surgeons’ expertise. To address this challenge, we propose an automated and efficient method for measuring the centroid angle to guide preoperative rod design from CT images. The centroid angle is defined by lines connecting centroids of the upper and lower vertebrae pairs, providing a reliable measurement for spinal deformities. The proposed pipeline includes (1) 3D spine segmentation with multiscale multitask deep learning; (2) vertebrae recognition using graphical morphology; (3) automatic and reproducible centroid angle measurement. Our method is evaluated on both healthy and pathological spines. Compared to manual measurements by professional surgeons, our method achieves an accuracy of 94.50% and 91.93% on adjacent and non-adjacent vertebrae, respectively. A Slicer-based plugin for robotic-assisted screw-rod systems implantation is built, providing a new clinical tool to personalize screw-rod systems consistent with the natural spinal curvature, thereby enhancing biomechanical properties.
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CiteScore
6.80
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