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首页> 外文期刊>Medical Physics >Validation of cieformable image registration algorithms on CT images of ex vivo porcine bladders with fsduciai markers
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Validation of cieformable image registration algorithms on CT images of ex vivo porcine bladders with fsduciai markers

机译:可复制图像配准算法在具有fsduciai标记的离体猪膀胱CT图像上的验证

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Purpose: The spatial accuracy of deformable image registration (DIR) is important in the implementation of image guided adaptive radiotherapy techniques for cancer in the pelvic region. Validation of algorithms is best performed on phantoms with fiducial markers undergoing controlled large deformations. Excised porcine bladders, exhibiting similar filling and voiding behavior as human bladders, provide such an environment. The aim of this study was to determine the spatial accuracy of different DIR algorithms on CT images of ex vivo porcine bladders with radiopaque fiducial markers applied to the outer surface, for a range of bladder volumes, using various accuracy metrics. Methods: Five excised porcine bladders with a grid of 30-40 radiopaque fiducial markers attached to the outer wall were suspended inside a water-filled phantom. The bladder was filled with a controlled amount of water with added contrast medium for a range of filling volumes (100-400 ml in steps of 50 ml) using a luer lock syringe, and CT scans were acquired at each filling volume. DIR was performed for each data set, with the 100 ml bladder as the reference image. Six intensity-based algorithms (optical flow or demons-based) implemented in the MATLAB platform DIRART, a b-spline algorithm implemented in the commercial software package VelocityAI, and a structure-based algorithm (Symmetric Thin Plate Spline Robust Point Matching) were validated, using adequate parameter settings according to values previously published. The resulting deformation vector field from each registration was applied to the contoured bladder structures and to the marker coordinates for spatial error calculation. The quality of the algorithms was assessed by comparing the different error metrics across the different algorithms, and by comparing the effect of deformation magnitude (bladder volume difference) per algorithm, using the Independent Samples Kruskal-Wallis test. Results: The authors found good structure accuracy without dependency on bladder volume difference for all but one algorithm, and with the best result for the structure-based algorithm. Spatial accuracy as assessed from marker errors was disappointing for all algorithms, especially for large volume differences, implying that the deformations described by the registration did not represent anatomically correct deformations. The structure-based algorithm performed the best in terms of marker error for the large volume difference (100-400 ml). In general, for the small volume difference (100-150 ml) the algorithms performed relatively similarly. The structure-based algorithm exhibited the best balance in performance between small and large volume differences, and among the intensity-based algorithms, the algorithm implemented in Velocity AI exhibited the best balance. Conclusions: Validation of multiple DIR algorithms on a novel physiological bladder phantom revealed that the structure accuracy was good for most algorithms, but that the spatial accuracy as assessed from markers was low for all algorithms, especially for large deformations. Hence, many of the available algorithms exhibit sufficient accuracy for contour propagation purposes, but possibly not for accurate dose accumulation.
机译:目的:可变形图像配准(DIR)的空间准确性对于骨盆区域癌症的图像引导自适应放射治疗技术的实施非常重要。算法的验证最好在带有受控制的大变形的基准标记的体模上执行。表现出与人的膀胱类似的填充和排泄行为的已切除的猪膀胱提供了这样的环境。这项研究的目的是使用不同的准确性指标,在不同的膀胱体积范围内,通过将不透射线的基准标记物应用于外表面,确定不同DIR算法在离体猪膀胱CT图像上的空间准确性。方法:将五个带有30-40个不透射线基准标记的网格的附着在外壁上的猪膀胱悬挂在一个充满水的模型中。使用鲁尔锁注射器,为膀胱填充一定量的水,并添加一定量的造影剂,以适应一定的填充量范围(100-400 ml,每步50 ml),并在每个填充量下进行CT扫描。对每个数据集执行DIR,以100 ml膀胱作为参考图像。验证了在MATLAB平台DIRART中实现的六种基于强度的算法(基于光流或基于恶魔),在商业软件包VelocityAI中实现的b样条算法以及基于结构的算法(对称薄板样条线鲁棒点匹配) ,根据先前发布的值使用适当的参数设置。每次配准产生的变形矢量场被应用于轮廓化的膀胱结构和标记坐标,以进行空间误差计算。使用独立样本Kruskal-Wallis检验,通过比较不同算法之间的不同误差度量,并比较每种算法的变形量(膀胱体积差异)的影响,来评估算法的质量。结果:作者发现,除一种算法外,其他所有算法均不依赖于膀胱体积差异,具有良好的结构精度,而基于结构的算法则具有最佳结果。从标记错误评估的空间精度对于所有算法都令人失望,尤其是对于较大的体积差异,这意味着配准描述的变形并不代表解剖学上正确的变形。对于较大的体积差异(100-400 ml),基于结构的算法在标记误差方面表现最佳。通常,对于较小的体积差异(100-150 ml),算法的执行相对相似。在小体积差异和大体积差异之间,基于结构的算法表现出最佳的平衡,而在基于强度的算法中,在Velocity AI中实现的算法表现出最佳的平衡。结论:在一种新颖的生理膀胱模型上对多种DIR算法的验证表明,大多数算法的结构精度都很好,但是对于所有算法,特别是对于大变形,从标记物评估的空间精度均很低。因此,许多可用的算法对于轮廓传播目的表现出足够的准确性,但可能对于精确的剂量累积而言却没有。

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