首页> 外文会议>ACMKDD International Conference on Knowledge Discovery and Data Mining;KDD 2008 >Learning Methods for Lung Tumor Markerless Gating in Image-Guided Radiotherapy
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Learning Methods for Lung Tumor Markerless Gating in Image-Guided Radiotherapy

机译:影像引导放疗中肺肿瘤无标记门控的学习方法

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In an idealized gated radiotherapy treatment, radiation is delivered only when the tumor is at the right position. 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. In this paper, we investigate machine learning algorithms for markerless gated radiotherapy with fluoroscopic images. Previous approach utilizes template matching to localize the tumor position. Here, we investigate two ways to improve the precision of tumor target localization by applying: (1) an ensemble of templates where the representative templates are selected by Gaussian mixture clustering, and (2) a support vector machine (SVM) classifier with radial basis kernels. Template matching only considers images inside the gating window, but images outside the gating window might provide additional information. We take advantage of both states and re-cast the gating problem into a classification problem. Thus, we are able to use the SVM classifier for gated radiotherapy. To verify the effectiveness of the two proposed techniques, we apply them on five sequences of fluoroscopic images from five lung cancer patients against the gating signal of manually contoured tumors as ground truth. Our five-patient case study shows that both ensemble template matching and SVM are reasonable tools for image-guided markerless gated radiotherapy with an average of approximately 95% precision in terms of delivered target dose at approximately 35% duty cycle.
机译:在理想的门控放疗中,仅在肿瘤处于正确位置时才进行放射。对于门控肺癌放疗,由于使用外部替代物时存在很大的不确定性以及使用植入的基准标记物时存在气胸的风险,因此难以生成准确的门控信号。在本文中,我们研究了使用透视图像进行无标记门控放射治疗的机器学习算法。先前的方法利用模板匹配来定位肿瘤位置。在这里,我们研究通过应用以下两种方法来提高肿瘤靶点定位的精度:(1)一组模板,其中代表性模板是通过高斯混合聚类选择的;(2)径向基支持向量机(SVM)分类器内核。模板匹配仅考虑选通窗口内的图像,但选通窗口外的图像可能会提供其他信息。我们利用这两种状态,并将门控问题重新转换为分类问题。因此,我们能够将SVM分类器用于门控放疗。为了验证这两种技术的有效性,我们将它们应用于来自五个肺癌患者的五个透视图像序列中,以手动轮廓化的肿瘤的门控信号为基础。我们的五个病人的案例研究表明,集成模板匹配和SVM都是用于图像引导无标记门控放射治疗的合理工具,在约35%占空比下,所递送的目标剂量的平均精度约为95%。

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