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使用单张射线照片进行脊柱自动实时二维到三维配准的机器学习。

Machine learning for automated and real-time two-dimensional to three-dimensional registration of the spine using a single radiograph.

机构信息

Departments of1Neurosurgery and.

2Harvard-MIT Health Sciences and Technology and.

出版信息

Neurosurg Focus. 2023 Jun;54(6):E16. doi: 10.3171/2023.3.FOCUS2345.

Abstract

OBJECTIVE

The goal of this work was to methodically evaluate, optimize, and validate a self-supervised machine learning algorithm capable of real-time automatic registration and fluoroscopic localization of the spine using a single radiograph or fluoroscopic frame.

METHODS

The authors propose a two-dimensional to three-dimensional (2D-3D) registration algorithm that maximizes an image similarity metric between radiographic images to identify the position of a C-arm relative to a 3D volume. This work utilizes digitally reconstructed radiographs (DRRs), which are synthetic radiographic images generated by simulating the x-ray projections as they would pass through a CT volume. To evaluate the algorithm, the authors used cone-beam CT data for 127 patients obtained from an open-source de-identified registry of cervical, thoracic, and lumbar scans. They systematically evaluated and tuned the algorithm, then quantified the convergence rate of the model by simulating C-arm registrations with 80 randomly simulated DRRs for each CT volume. The endpoints of this study were time to convergence, accuracy of convergence for each of the C-arm's degrees of freedom, and overall registration accuracy based on a voxel-by-voxel measurement.

RESULTS

A total of 10,160 unique radiographic images were simulated from 127 CT scans. The algorithm successfully converged to the correct solution 82% of the time with an average of 1.96 seconds of computation. The radiographic images for which the algorithm converged to the solution demonstrated 99.9% registration accuracy despite utilizing only single-precision computation for speed. The algorithm was found to be optimized for convergence when the search space was limited to a ± 45° offset in the right anterior oblique/left anterior oblique, cranial/caudal, and receiver rotation angles with the radiographic isocenter contained within 8000 cm3 of the volumetric center of the CT volume.

CONCLUSIONS

The investigated machine learning algorithm has the potential to aid surgeons in level localization, surgical planning, and intraoperative navigation through a completely automated 2D-3D registration process. Future work will focus on algorithmic optimizations to improve the convergence rate and speed profile.

摘要

目的

本研究旨在系统地评估、优化和验证一种基于机器学习的算法,该算法能够使用单张射线照片或透视框架实时自动完成脊柱的配准和透视定位。

方法

作者提出了一种二维到三维(2D-3D)的配准算法,该算法通过最大化射线照片之间的图像相似性度量来识别 C 臂相对于 3D 容积的位置。该方法利用数字重建射线照片(DRR),即通过模拟射线穿过 CT 容积的投影来生成的合成射线照片。为了评估算法,作者使用了从公开的颈椎、胸椎和腰椎扫描去识别注册表中获得的 127 名患者的锥形束 CT 数据。他们系统地评估和调整了算法,然后通过模拟 80 个随机生成的 DRR 对每个 CT 容积的 C 臂进行注册,量化了模型的收敛速度。本研究的终点是收敛时间、每个 C 臂自由度的收敛精度以及基于体素的整体注册精度。

结果

从 127 个 CT 扫描中模拟了总共 10160 张独特的射线照片。该算法成功收敛到正确解的比例为 82%,平均计算时间为 1.96 秒。尽管仅使用单精度计算来提高速度,但算法收敛到解决方案的射线照片的注册精度达到了 99.9%。研究发现,当搜索空间限制在右前斜位/左前斜位、头侧/尾侧和接收器旋转角度的±45°偏移,并且射线照片的等中心位于 CT 容积的体积中心的 8000cm3 内时,算法的收敛性最佳。

结论

所研究的机器学习算法有可能通过完全自动化的 2D-3D 注册过程来帮助外科医生进行水平定位、手术规划和术中导航。未来的工作将集中在算法优化上,以提高收敛速度和速度曲线。

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