De Silva T, Uneri A, Ketcha M D, Reaungamornrat S, Kleinszig G, Vogt S, Aygun N, Lo S-F, Wolinsky J-P, Siewerdsen J H
Department of Biomedical Engineering, Johns Hopkins University, Baltimore, MD 21205, USA.
Phys Med Biol. 2016 Apr 21;61(8):3009-25. doi: 10.1088/0031-9155/61/8/3009. Epub 2016 Mar 18.
In image-guided spine surgery, robust three-dimensional to two-dimensional (3D-2D) registration of preoperative computed tomography (CT) and intraoperative radiographs can be challenged by the image content mismatch associated with the presence of surgical instrumentation and implants as well as soft-tissue resection or deformation. This work investigates image similarity metrics in 3D-2D registration offering improved robustness against mismatch, thereby improving performance and reducing or eliminating the need for manual masking. The performance of four gradient-based image similarity metrics (gradient information (GI), gradient correlation (GC), gradient information with linear scaling (GS), and gradient orientation (GO)) with a multi-start optimization strategy was evaluated in an institutional review board-approved retrospective clinical study using 51 preoperative CT images and 115 intraoperative mobile radiographs. Registrations were tested with and without polygonal masks as a function of the number of multistarts employed during optimization. Registration accuracy was evaluated in terms of the projection distance error (PDE) and assessment of failure modes (PDE > 30 mm) that could impede reliable vertebral level localization. With manual polygonal masking and 200 multistarts, the GC and GO metrics exhibited robust performance with 0% gross failures and median PDE < 6.4 mm (±4.4 mm interquartile range (IQR)) and a median runtime of 84 s (plus upwards of 1-2 min for manual masking). Excluding manual polygonal masks and decreasing the number of multistarts to 50 caused the GC-based registration to fail at a rate of >14%; however, GO maintained robustness with a 0% gross failure rate. Overall, the GI, GC, and GS metrics were susceptible to registration errors associated with content mismatch, but GO provided robust registration (median PDE = 5.5 mm, 2.6 mm IQR) without manual masking and with an improved runtime (29.3 s). The GO metric improved the registration accuracy and robustness in the presence of strong image content mismatch. This capability could offer valuable assistance and decision support in spine level localization in a manner consistent with clinical workflow.
在图像引导脊柱手术中,术前计算机断层扫描(CT)与术中X线片之间稳健的三维到二维(3D-2D)配准可能会受到与手术器械和植入物的存在以及软组织切除或变形相关的图像内容不匹配的挑战。这项工作研究了3D-2D配准中的图像相似性度量,以提高对不匹配的鲁棒性,从而提高性能并减少或消除手动掩膜的需求。在一项经机构审查委员会批准的回顾性临床研究中,使用51张术前CT图像和115张术中移动X线片,评估了四种基于梯度的图像相似性度量(梯度信息(GI)、梯度相关性(GC)、线性缩放的梯度信息(GS)和梯度方向(GO))与多起点优化策略的性能。根据优化过程中使用的多起点数量,在有和没有多边形掩膜的情况下对配准进行测试。根据投影距离误差(PDE)和对可能妨碍可靠椎体水平定位的失败模式(PDE > 30 mm)的评估来评估配准精度。使用手动多边形掩膜和200次多起点时,GC和GO度量表现出稳健的性能,总失败率为0%,PDE中位数< 6.4 mm(四分位间距(IQR)±4.4 mm),运行时间中位数为84秒(加上手动掩膜的1 - 2分钟以上)。排除手动多边形掩膜并将多起点数量减少到50会导致基于GC的配准失败率>14%;然而,GO保持了稳健性,总失败率为0%。总体而言,GI、GC和GS度量容易受到与内容不匹配相关的配准误差的影响,但GO在无需手动掩膜且运行时间有所改善(29.3秒)的情况下提供了稳健的配准(PDE中位数 = 5.5 mm,IQR为2.6 mm)。GO度量在存在强烈图像内容不匹配的情况下提高了配准精度和稳健性。这种能力可以以与临床工作流程一致的方式为脊柱水平定位提供有价值的辅助和决策支持。