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Robust automatic rigid registration of MRI and X-ray using external fiducial markers for XFM-guided interventional procedures

机译:使用XFM引导的介入手术程序使用外部基准标记对MRI和X射线进行可靠的自动刚性配准

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摘要

>Purpose: In X-ray fused with MRI, previously gathered roadmap MRI volume images are overlaid on live X-ray fluoroscopy images to help guide the clinician during an interventional procedure. The incorporation of MRI data allows for the visualization of soft tissue that is poorly visualized under X-ray. The widespread clinical use of this technique will require fully automating as many components as possible. While previous use of this method has required time-consuming manual intervention to register the two modalities, in this article, the authors present a fully automatic rigid-body registration method.>Methods: External fiducial markers that are visible under these two complimentary imaging modalities were used to register the X-ray images with the roadmap MR images. The method has three components: (a) The identification of the 3D locations of the markers from a full 3D MR volume, (b) the identification of the 3D locations of the markers from a small number of 2D X-ray fluoroscopy images, and (c) finding the rigid-body transformation that registers the two point sets in the two modalities. For part (a), the localization of the markers from MR data, the MR volume image was thresholded, connected voxels were segmented and labeled, and the centroids of the connected components were computed. For part (b), the X-ray projection images, produced by an image intensifier, were first corrected for distortions. Binary mask images of the markers were created from the distortion-corrected X-ray projection images by applying edge detection, pattern recognition, and image morphological operations. The markers were localized in the X-ray frame using an iterative backprojection-based method which segments voxels in the volume of interest, discards false positives based on the previously computed edge-detected projections, and calculates the locations of the true markers as the centroids of the clusters of voxels that remain. For part (c), a variant of the iterative closest point method was used to find correspondences between and register the two sets of points computed from MR and X-ray data. This knowledge of the correspondence between the two point sets was used to refine, first, the X-ray marker localization and then the total rigid-body registration between modalities. The rigid-body registration was used to overlay the roadmap MR image onto the X-ray fluoroscopy projections.>Results: In 35 separate experiments, the markers were correctly registered to each other in 100% of the cases. When half the number of X-ray projections was used (10 X-ray projections instead of 20), the markers were correctly registered in all 35 experiments. The method was also successful in all 35 experiments when the number of markers was (retrospectively) halved (from 16 to 8). The target registration error was computed in a phantom experiment to be less than 2.4 mm. In two in vivo experiments, targets (interventional devices with pointlike metallic structures) inside the heart were successfully registered between the two modalities.>Conclusions: The method presented can be used to automatically register a roadmap MR image to X-ray fluoroscopy using fiducial markers and as few as ten X-ray projections.
机译:>目的:在X射线与MRI融合的情况下,先前收集的路线图MRI体积图像会叠加在实时X射线荧光透视图像上,以帮助在介入过程中指导临床医生。 MRI数据的合并允许软组织的可视化,而软组织在X射线下的可视性很差。该技术在临床上的广泛使用将需要使尽可能多的组件完全自动化。虽然以前使用此方法需要耗时的手动干预来注册这两种方式,但在本文中,作者提出了一种全自动的刚体注册方法。>方法:可见的外部基准标记在这两个互补的成像模态下,X射线图像与路线图MR图像配准。该方法具有三个组成部分:(a)从完整的3D MR体积中识别标记的3D位置,(b)从少量的2D X射线荧光透视图像中识别标记的3D位置,以及(c)找到将两种点集记录在两种模态中的刚体变换。对于部分(a),根据MR数据对标记进行定位,对MR体积图像进行阈值处理,对相连的体素进行分割和标记,并计算相连的分量的质心。对于(b)部分,首先校正由图像增强器产生的X射线投影图像的畸变。通过应用边缘检测,图案识别和图像形态学操作,从失真校正后的X射线投影图像创建标记的二值掩模图像。使用基于反投影的迭代方法将标记定位在X射线帧中,该方法将感兴趣体积中的体素进行分割,根据先前计算的边缘检测到的投影丢弃假阳性,然后将真实标记的位置计算为质心剩余的体素簇。对于部分(c),使用了迭代最近点方法的一种变体来查找之间的对应关系并注册从MR和X射线数据计算出的两组点。对两个点集之间的对应关系的了解,首先用于完善X射线标记的定位,然后用于改进模态之间的总刚体配准。 >结果:在35个单独的实验中,在100%的情况下,标记物彼此正确地进行了配准,使用了刚体配准将路线图MR图像叠加到X射线荧光透视投影上。当使用一半数量的X射线投影(10个X射线投影而不是20个)时,标记在所有35个实验中均已正确记录。当标记的数量减半(从16个减少到8个)时,该方法在所有35个实验中均成功。在幻像实验中计算出目标配准误差小于2.4毫米。在两个体内实验中,在两个模态之间成功注册了心脏内部的目标(具有点状金属结构的介入装置)。>结论:提出的方法可用于将路线图MR图像自动注册到X使用基准标记和少至十个X射线投影的X射线透视。

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