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使用基准标记簇的动态模板在千伏图像中进行自动目标跟踪。

Automated target tracking in kilovoltage images using dynamic templates of fiducial marker clusters.

作者信息

Campbell Warren G, Miften Moyed, Jones Bernard L

机构信息

Department of Radiation Oncology, University of Colorado School of Medicine, Aurora, 80045, Colorado, USA.

出版信息

Med Phys. 2017 Feb;44(2):364-374. doi: 10.1002/mp.12073.

Abstract

PURPOSE

Implanted fiducial markers are often used in radiotherapy to facilitate accurate visualization and localization of tumors. Typically, such markers are used to aid daily patient positioning and to verify the target's position during treatment. These markers can also provide a wealth of information regarding tumor motion, yet determining their accurate position in thousands of images is often prohibitive. This work introduces a novel, automated method for identifying fiducial markers in planar x-ray imaging.

METHODS

In brief, the method was performed as follows. First, using processed CBCT projection images, an automated routine of reconstruction, forward-projection, tracking, and stabilization generated static templates of the marker cluster at arbitrary viewing angles. Breathing data were then incorporated into the same routine, resulting in dynamic templates dependent on both viewing angle and breathing motion. Finally, marker clusters were tracked using normalized cross correlations between templates (either static or dynamic) and CBCT projection images. To quantify the accuracy of the technique, a phantom study was performed and markers were manually tracked by two users to compare the automated technique against human measurements. Then, 75 pretreatment CBCT scans of 15 pancreatic cancer patients were analyzed to test the automated technique under real-life conditions, including several challenging scenarios for tracking fiducial markers (e.g., extraneous metallic objects, field-of-view limitations, and marker migration).

RESULTS

In phantom and patient studies, for both static and dynamic templates, the method automatically tracked visible marker clusters in 100% of projection images. For scans in which a phantom exhibited 0D, 1D, and 3D motion, the automated technique showed median errors of 39 μm, 53 μm, and 93 μm, respectively. Human precision was worse in comparison; median interobserver differences for single markers and for the averaged coordinates of four markers were 183 μm and 120 μm, respectively. In patient scans, the method was robust against a number of confounding factors. Automated tracking was performed accurately despite the presence of radio-opaque, nonmarker objects (e.g., metallic stents, surgical clips) in five patients. This success was attributed to the distinct appearance of clusters as a whole compared to individual markers. Dynamic templates produced higher cross-correlation scores than static templates in patients whose fiducial marker clusters exhibited considerable deformation or rotation during the breathing cycle. For other patients, no significant difference was seen between dynamic and static templates. Additionally, transient differences in the cross-correlation score identified instances where markers disappeared from view.

CONCLUSIONS

A novel, automated method for producing dynamic templates of fiducial marker clusters has been developed. Production of these templates automatically provides measurements of tumor motion that occurred during the CBCT scan that was used to produce them. Additionally, using these templates with intrafractional images could potentially allow for more robust real-time target tracking in radiotherapy.

摘要

目的

植入的基准标记物常用于放射治疗,以促进肿瘤的精确可视化和定位。通常,此类标记物用于辅助患者每日定位,并在治疗期间验证靶区位置。这些标记物还可提供大量有关肿瘤运动的信息,然而,在数千张图像中确定其精确位置往往具有挑战性。本研究介绍了一种在平面X射线成像中识别基准标记物的新型自动化方法。

方法

简而言之,该方法按以下步骤进行。首先,使用处理后的CBCT投影图像,通过重建、正向投影、跟踪和稳定化的自动化程序,生成任意视角下标记物簇的静态模板。然后将呼吸数据纳入同一程序,从而生成依赖于视角和呼吸运动的动态模板。最后,使用模板(静态或动态)与CBCT投影图像之间的归一化互相关来跟踪标记物簇。为了量化该技术的准确性,进行了体模研究,并由两名使用者手动跟踪标记物,以将自动化技术与人工测量结果进行比较。然后,分析了15例胰腺癌患者的75次治疗前CBCT扫描,以在实际情况下测试该自动化技术,包括一些跟踪基准标记物的具有挑战性的场景(例如,外部金属物体、视野限制和标记物迁移)。

结果

在体模和患者研究中,对于静态和动态模板,该方法在100%的投影图像中自动跟踪可见的标记物簇。对于体模表现出0D、1D和3D运动的扫描,自动化技术显示的中位误差分别为39μm、53μm和93μm。相比之下,人工精度较差;单个标记物以及四个标记物平均坐标的观察者间中位差异分别为183μm和120μm。在患者扫描中,该方法对多种混杂因素具有鲁棒性。尽管五名患者存在不透射线的非标记物物体(例如金属支架、手术夹),仍能准确进行自动跟踪。这一成功归因于簇作为一个整体与单个标记物相比具有独特的外观。在基准标记物簇在呼吸周期中表现出明显变形或旋转的患者中,动态模板产生的互相关分数高于静态模板。对于其他患者,动态模板和静态模板之间未观察到显著差异。此外,互相关分数的瞬时差异识别出标记物从视野中消失的情况。

结论

已开发出一种用于生成基准标记物簇动态模板的新型自动化方法。这些模板的生成自动提供了在用于生成它们的CBCT扫描期间发生的肿瘤运动的测量值。此外,将这些模板与分次内图像一起使用可能会在放射治疗中实现更稳健的实时靶区跟踪。

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