Dipartimento di Elettronica, Informazione e Bioingegneria, Politecnico di Milano, piazza L. Da Vinci 32, Milano 20133, Italy.
Med Phys. 2013 Nov;40(11):111701. doi: 10.1118/1.4822486.
The availability of corresponding landmarks in IGRT image series allows quantifying the inter and intrafractional motion of internal organs. In this study, an approach for the automatic localization of anatomical landmarks is presented, with the aim of describing the nonrigid motion of anatomo-pathological structures in radiotherapy treatments according to local image contrast.
An adaptive scale invariant feature transform (SIFT) was developed from the integration of a standard 3D SIFT approach with a local image-based contrast definition. The robustness and invariance of the proposed method to shape-preserving and deformable transforms were analyzed in a CT phantom study. The application of contrast transforms to the phantom images was also tested, in order to verify the variation of the local adaptive measure in relation to the modification of image contrast. The method was also applied to a lung 4D CT dataset, relying on manual feature identification by an expert user as ground truth. The 3D residual distance between matches obtained in adaptive-SIFT was then computed to verify the internal motion quantification with respect to the expert user. Extracted corresponding features in the lungs were used as regularization landmarks in a multistage deformable image registration (DIR) mapping the inhale vs exhale phase. The residual distances between the warped manual landmarks and their reference position in the inhale phase were evaluated, in order to provide a quantitative indication of the registration performed with the three different point sets.
The phantom study confirmed the method invariance and robustness properties to shape-preserving and deformable transforms, showing residual matching errors below the voxel dimension. The adapted SIFT algorithm on the 4D CT dataset provided automated and accurate motion detection of peak to peak breathing motion. The proposed method resulted in reduced residual errors with respect to standard SIFT, providing a motion description comparable to expert manual identification, as confirmed by DIR.
The application of the method to a 4D lung CT patient dataset demonstrated adaptive-SIFT potential as an automatic tool to detect landmarks for DIR regularization and internal motion quantification. Future works should include the optimization of the computational cost and the application of the method to other anatomical sites and image modalities.
在图像引导放疗(IGRT)图像系列中,相应的解剖学标志的存在使得能够量化内部器官的内外运动。在这项研究中,提出了一种自动定位解剖学标志的方法,目的是根据局部图像对比度来描述放射治疗中解剖病理结构的非刚性运动。
从标准的 3D 尺度不变特征变换(SIFT)方法与基于局部图像对比度定义的方法的集成中开发了一种自适应的尺度不变特征变换(SIFT)方法。在 CT 体模研究中,分析了所提出的方法对保形和变形变换的鲁棒性和不变性。还测试了对比度变换在体模图像上的应用,以验证局部自适应度量与图像对比度变化的关系。该方法还应用于一组 4D CT 数据集,依靠专家用户手动特征识别作为基准。然后计算自适应-SIFT 中获得的匹配的 3D 残差距离,以验证与专家用户相比的内部运动定量。在吸气相与呼气相比多阶段可变形图像配准(DIR)中,将提取的肺部对应特征用作正则化标志。评估在吸气相的参考位置和变形的手动标志之间的残差距离,以提供三种不同点集进行的配准的定量指示。
体模研究证实了该方法对保形和变形变换的不变性和鲁棒性特性,显示出残差匹配误差低于体素尺寸。4D CT 数据集上的自适应 SIFT 算法提供了峰值到峰值呼吸运动的自动和准确的运动检测。与标准 SIFT 相比,所提出的方法降低了残差误差,提供了与专家手动识别相当的运动描述,这一点也得到了 DIR 的证实。
该方法应用于 4D 肺部 CT 患者数据集的结果表明,自适应 SIFT 具有作为自动工具的潜力,用于检测 DIR 正则化和内部运动定量的标志。未来的工作应包括优化计算成本和将该方法应用于其他解剖部位和图像模态。