Department of Neurosurgery, Heidelberg University Hospital, Im Neuenheimer Feld 400, Heidelberg 69120, Germany.
Division of Medical Image Computing, German Cancer Research Center (DKFZ) Heidelberg, Im Neuenheimer Feld 280, Heidelberg 69120, Germany.
Spine J. 2022 Oct;22(10):1666-1676. doi: 10.1016/j.spinee.2022.05.002. Epub 2022 May 16.
Navigation and robotic systems have been increasingly applied to spinal instrumentation but dedicated screw planning is a time-consuming prerequisite to tap the full potential of these techniques.
To develop and validate an automated planning tool for lumbosacral pedicle screw placement using a convolutional neural network (CNN) to facilitate the planning process.
STUDY DESIGN/SETTING: Retrospective analysis and processing of CT and screw planning data randomly selected from a consecutive registry of CT-navigated instrumentations from a single academic institution.
Data from 179 cases was processed for CNN training and validation (155 for training, 24 for validation) leveraging a total of 1182 screws (1052 for training, 130 for validation).
Quantitative and qualitative (Gertzbein-Robbins classification [GR]) validation via comparison of automatically and manually planned reference screws, inter-rater and intra-rater variability.
Annotated data from CT-navigated instrumentation was used to train a CNN operating in a vertebra instance-based approach employing a state-of-the-art U-Net framework. Internal five-fold cross-validation and external validation on an independent cohort not previously involved in training was performed. Quantitative validation of automatically planned screws was performed in comparison to corresponding manually planned screws by calculating the minimal absolute difference (MAD) of screw head and tip points, length and diameter, screw direction and Dice coefficient. Results were evaluated in relation to inter-rater and intra-rater variability of manual screw planning.
Automated screw planning was successful in all targeted 130 screws. Compared with manually planned screws as a reference, mean MAD of automatically planned screws was 4.61±2.27 mm for screw head, 3.96±2.19 mm for tip points and 5.51±3.64° for screw direction. These differences were either statistically comparable or significantly smaller when compared with interrater variability of manual screw planning (p>.99 for head point and direction, p=.004 for tip point, respectively). Mean Dice coefficient of 0.61±0.16 indicated significantly greater agreement of automatic screws with the manual reference compared with interrater agreement (Dice 0.56±0.18, p<.001). Automatically planned screws were marginally shorter (MAD 3.4±3.2 mm) and thinner (MAD mean 0.3±0.6 mm) compared with the manual reference, but with statistical significance (p<.0001, respectively). Automatically planned screws were GR grade A in 96.2% in qualitative validation. Planning time was significantly shorter with the automatic approach (0:41 min vs. 6:41 min, p<.0001).
We derived and validated a fully automated planning tool for lumbosacral pedicle screws using a CNN. Our validation showed noninferiority to manual screw planning and provided sufficient accuracy to facilitate and expedite the screw planning process. These results offer a high potential to improve workflows in spine surgery when integrated into navigation or robotic assistance systems.
导航和机器人系统已越来越多地应用于脊柱器械,但专用螺钉规划是充分利用这些技术的潜在优势的耗时前提。
开发和验证一种使用卷积神经网络(CNN)的腰骶部椎弓根螺钉放置自动规划工具,以促进规划过程。
研究设计/设置:回顾性分析和处理来自单一学术机构的 CT 导航器械连续注册中随机选择的 CT 和螺钉规划数据。
使用总共 1182 颗螺钉(1052 颗用于训练,130 颗用于验证)对来自 179 例的数据进行了 CNN 训练和验证(155 例用于训练,24 例用于验证)。
通过比较自动和手动规划的参考螺钉、内部和内部评估者之间的变异性,进行定量和定性(格茨伯因-罗宾斯分类[GR])验证。
使用来自 CT 导航器械的带注释数据,通过使用最先进的 U-Net 框架的基于椎骨实例的方法来训练 CNN。在内部五折交叉验证和外部独立队列验证(先前未参与培训)上进行了测试。通过计算螺钉头和尖端点、长度和直径、螺钉方向和 Dice 系数的最小绝对差异(MAD),对自动规划螺钉与相应的手动规划螺钉进行定量验证。评估结果与手动螺钉规划的内部评估者和内部评估者之间的变异性有关。
在所有目标的 130 颗螺钉中,自动螺钉规划均成功完成。与手动规划的螺钉作为参考相比,自动规划螺钉的平均 MAD 为螺钉头 4.61±2.27mm,尖端点 3.96±2.19mm,螺钉方向 5.51±3.64°。与手动螺钉规划的内部评估者变异性相比,这些差异要么具有统计学可比性,要么明显更小(分别为头部和方向的 p>.99,尖端点的 p=.004)。Dice 系数平均值为 0.61±0.16,表明与内部评估者的一致性相比,自动螺钉与手动参考具有显著更高的一致性(Dice 0.56±0.18,p<.001)。与手动参考相比,自动规划螺钉的长度略短(MAD 3.4±3.2mm),直径略细(MAD 平均值 0.3±0.6mm),但具有统计学意义(分别为 p<.0001)。自动规划螺钉在定性验证中 96.2%为 GR 等级 A。自动方法的规划时间明显更短(0:41 分钟对 6:41 分钟,p<.0001)。
我们使用 CNN 得出并验证了一种用于腰骶部椎弓根螺钉的全自动规划工具。我们的验证表明,其不劣于手动螺钉规划,并且具有足够的准确性,可促进和简化螺钉规划过程。当集成到导航或机器人辅助系统中时,这些结果为脊柱外科手术的工作流程提供了很高的改进潜力。