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Objected constrained registration and manifold learning: A new patient setup approach in image guided radiation therapy of thoracic cancer

机译:有针对性的约束配准和流形学习:胸癌影像引导放射治疗中的新患者设置方法

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Purpose: The management of thoracic malignancies with radiation therapy is complicated by continuous target motion. In this study, a real time motion analysis approach is proposed to improve the accuracy of patient setup. Methods: For 11 lung cancer patients a long training fluoroscopy was acquired before the first treatment, and multiple short testing fluoroscopies were acquired weekly at the pretreatment patient setup of image guided radiotherapy (IGRT). The data analysis consisted of three steps: first a 4D target motion model was constructed from 4DCT and projected to the training fluoroscopy through deformable registration. Then the manifold learning method was used to construct a 2D subspace based on the target motion (kinetic) and location (static) information in the training fluoroscopy. Thereafter the respiratory phase in the testing fluoroscopy was determined by finding its location in the subspace. Finally, the phase determined testing fluoroscopy was registered to the corresponding 4DCT to derive the pretreatment patient position adjustment for the IGRT. The method was tested on clinical image sets and numerical phantoms. Results: The registration successfully reconstructed the 4D motion model with over 98% volume similarity in 4DCT, and over 95% area similarity in the training fluoroscopy. The machine learning method derived the phase values in over 98% and 93% test images of the phantom and patient images, respectively, with less than 3% phase error. The setup approach achieved an average accumulated setup error less than 1.7 mm in the cranial-caudal direction and less than 1 mm in the transverse plane. All results were validated against the ground truth of manual delineations by an experienced radiation oncologist. The expected total time for the pretreatment setup analysis was less than 10 s. Conclusions: By combining the registration and machine learning, the proposed approach has the potential to improve the accuracy of pretreatment setup for patients with thoracic malignancy.
机译:目的:连续的靶标运动使通过放射疗法治疗胸腔恶性肿瘤变得复杂。在这项研究中,提出了一种实时运动分析方法来提高患者设置的准确性。方法:对于11名肺癌患者,在首次治疗之前先接受了长期的透视训练,并在影像引导放疗(IGRT)的患者预处理阶段每周进行了多次短期荧光检查。数据分析包括三个步骤:首先,从4DCT构建4D目标运动模型,并通过可变形配准将其投影到训练透视中。然后,基于训练荧光透视中的目标运动(运动)和位置(静态)信息,使用流形学习方法构建二维子空间。此后,通过在荧光检查中确定其在子空间中的位置来确定其呼吸阶段。最后,将相确定的测试荧光检查记录到相应的4DCT中,以得出IGRT的治疗前患者位置调整。该方法已在临床图像集和数字体模上进行了测试。结果:配准成功地重建了4D运动模型,在4DCT中体积相似度超过98%,在透视训练中面积相似度超过95%。机器学习方法分别导出了超过98%和93%的幻像和患者图像测试图像中的相位值,相位误差小于3%。设置方法实现的平均累积设置误差在颅尾方向上小于1.7 mm,在横向平面上小于1 mm。所有结果均由经验丰富的放射肿瘤学家针对手工划定的基本事实进行了验证。预处理设置分析的预期总时间少于10 s。结论:通过将注册和机器学习相结合,该方法具有提高胸腔恶性肿瘤患者预治疗设置准确性的潜力。

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