Cui Ying, Dy Jennifer G, Sharp Greg C, Alexander Brian, Jiang Steve B
Department of Electrical and Computer Engineering, Northeastern University, Boston, MA, USA.
Phys Med Biol. 2007 Feb 7;52(3):741-55. doi: 10.1088/0031-9155/52/3/015. Epub 2007 Jan 15.
For gated lung cancer radiotherapy, it is difficult to generate accurate gating signals due to the large uncertainties when using external surrogates and the risk of pneumothorax when using implanted fiducial markers. We have previously investigated and demonstrated the feasibility of generating gating signals using the correlation scores between the reference template image and the fluoroscopic images acquired during the treatment. In this paper, we present an in-depth study, aiming at the improvement of robustness of the algorithm and its validation using multiple sets of patient data. Three different template generating and matching methods have been developed and evaluated: (1) single template method, (2) multiple template method, and (3) template clustering method. Using the fluoroscopic data acquired during patient setup before each fraction of treatment, reference templates are built that represent the tumour position and shape in the gating window, which is assumed to be at the end-of-exhale phase. For the single template method, all the setup images within the gating window are averaged to generate a composite template. For the multiple template method, each setup image in the gating window is considered as a reference template and used to generate an ensemble of correlation scores. All the scores are then combined to generate the gating signal. For the template clustering method, clustering (grouping of similar objects together) is performed to reduce the large number of reference templates into a few representative ones. Each of these methods has been evaluated against the reference gating signal as manually determined by a radiation oncologist. Five patient datasets were used for evaluation. In each case, gated treatments were simulated at both 35% and 50% duty cycles. False positive, negative and total error rates were computed. Experiments show that the single template method is sensitive to noise; the multiple template and clustering methods are more robust to noise due to the smoothing effect of aggregation of correlation scores; and the clustering method results in the best performance in terms of computational efficiency and accuracy.
对于门控肺癌放疗,由于使用外部替代物时存在较大不确定性以及使用植入基准标记时存在气胸风险,因此难以生成准确的门控信号。我们之前已经研究并证明了利用参考模板图像与治疗期间获取的荧光透视图像之间的相关性得分来生成门控信号的可行性。在本文中,我们进行了深入研究,旨在提高算法的稳健性并使用多组患者数据对其进行验证。已开发并评估了三种不同的模板生成和匹配方法:(1)单模板方法,(2)多模板方法,以及(3)模板聚类方法。利用每次治疗分次前患者摆位期间获取的荧光透视数据,构建代表门控窗口(假定处于呼气末阶段)中肿瘤位置和形状的参考模板。对于单模板方法,将门控窗口内的所有摆位图像进行平均以生成复合模板。对于多模板方法,将门控窗口内的每个摆位图像视为参考模板并用于生成相关性得分的集合。然后将所有得分组合以生成门控信号。对于模板聚类方法,进行聚类(将相似对象分组在一起)以将大量参考模板减少为几个有代表性的模板。已针对放射肿瘤学家手动确定的参考门控信号对这些方法中的每一种进行了评估。使用了五个患者数据集进行评估。在每种情况下,均以35%和50%的占空比模拟门控治疗。计算了假阳性、假阴性和总错误率。实验表明,单模板方法对噪声敏感;多模板和聚类方法由于相关性得分聚合的平滑作用而对噪声更具鲁棒性;并且聚类方法在计算效率和准确性方面表现最佳。