Tang Xiaoli, Sharp Greg C, Jiang Steve B
Department of Radiation Oncology, Massachusetts General Hospital and Harvard Medical School, Boston, MA 02114, USA.
Phys Med Biol. 2007 Jul 21;52(14):4081-98. doi: 10.1088/0031-9155/52/14/005. Epub 2007 Jun 11.
When treating mobile tumors using techniques such as beam gating or beam tracking, precise localization of tumor position is required, which is often realized by fluoroscopically tracking implanted fiducial markers. Multiple markers placed inside or near a tumor are often preferred to a single marker for the sake of accuracy. In this work, we propose a marker tracking system that can track multiple markers simultaneously, without confusing them, and that is also robust enough to continue tracking even when the markers are moving behind bony anatomy. The integrated radiotherapy imaging system (IRIS), developed at the Massachusetts General Hospital (MGH), was used to take fluoroscopy videos for marker tracking. The tracking system integrates marker detection with a multiple object tracking process, inspired by the multiple hypothesis marker tracking (MHT) process. It also utilizes breathing pattern information to help tracking. Four criteria are used to identify tracking failure, and when tracking failure occurs, the system can immediately inform the user. (In the clinical environment, the system would immediately disable the treatment beam.) In this paper, two liver patients with implanted fiducial markers were studied, and the studies were performed retrospectively to assess the effectiveness of the new tracking system. For both patients, LAT and AP fluoroscopic videos were studied. In order to better test the proposed tracking system, artificial markers were added around the real markers to disturb the tracking of the real markers. The performance of the proposed system was compared to that of a conventional tracking system (one that did not use multiple object tracking). The performance of the new system was also investigated with and without consideration of the breathing pattern information. We found that the conventional tracking system can easily miss tracking markers in the presence of artificial markers, and it cannot detect the tracking failures. On the other hand, our proposed system can track markers well and can also successfully detect tracking failures. Failure rate was calculated on a per-frame-per-marker basis for the proposed tracking system. When the system considered breathing pattern information, it had a 0% failure rate 75% of the time and 0.4% failure rate 25% of the time. However, when the system did not consider breathing patterns, it had a much higher failure rate, in the range of 1.2%-12%. Both examples of the proposed system yielded low e(95) (the maximum marker tracking error at 95% confidence level)-less than 1.5 mm.
在使用射束门控或射束跟踪等技术治疗移动肿瘤时,需要精确确定肿瘤位置,这通常通过荧光透视跟踪植入的基准标记来实现。为了提高准确性,肿瘤内部或附近通常会放置多个标记而非单个标记。在本研究中,我们提出了一种标记跟踪系统,该系统能够同时跟踪多个标记且不会混淆它们,并且即使标记在骨骼结构后方移动时也足够稳健以继续跟踪。由马萨诸塞州总医院(MGH)开发的集成放射治疗成像系统(IRIS)用于拍摄荧光透视视频以进行标记跟踪。该跟踪系统将标记检测与多目标跟踪过程相结合,其灵感来源于多假设标记跟踪(MHT)过程。它还利用呼吸模式信息来辅助跟踪。使用四个标准来识别跟踪失败情况,当跟踪失败发生时,系统能够立即通知用户。(在临床环境中,系统会立即禁用治疗射束。)在本文中,对两名植入了基准标记的肝脏患者进行了研究,这些研究是回顾性的,以评估新跟踪系统的有效性。对于这两名患者,研究了正侧位和前后位的荧光透视视频。为了更好地测试所提出的跟踪系统,在真实标记周围添加了人工标记以干扰对真实标记的跟踪。将所提出系统的性能与传统跟踪系统(一种未使用多目标跟踪的系统)的性能进行了比较。还研究了在考虑和不考虑呼吸模式信息的情况下新系统的性能。我们发现,在存在人工标记的情况下,传统跟踪系统很容易错过对标记的跟踪,并且无法检测到跟踪失败情况。另一方面,我们提出的系统能够很好地跟踪标记,并且还能成功检测到跟踪失败情况。针对所提出的跟踪系统,以每个标记每帧为基础计算失败率。当系统考虑呼吸模式信息时,75%的时间失败率为0%,25%的时间失败率为0.4%。然而,当系统不考虑呼吸模式时,失败率要高得多,在1.2% - 12%的范围内。所提出系统的两个示例均产生了较低的e(95)(95%置信水平下的最大标记跟踪误差),小于1.5毫米。