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Applying an animal model to quantify the uncertainties of an image-based 4D-CT algorithm

机译:应用动物模型量化基于图像的4D-CT算法的不确定性

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The purpose of this paper is to use an animal model to quantify the spatial displacement uncertainties and test the fundamental assumptions of an image-based 4D-CT algorithm in vivo. Six female Landrace cross pigs were ventilated and imaged using a 64-slice CT scanner (GE Healthcare) operating in axial cine mode. The breathing amplitude pattern of the pigs was varied by periodically crimping the ventilator gas return tube during the image acquisition. The image data were used to determine the displacement uncertainties that result from matching CT images at the same respiratory phase using normalized cross correlation (NCC) as the matching criteria. Additionally, the ability to match the respiratory phase of a 4.0cm subvolume of the thorax to a reference subvolume using only a single overlapping 2D slice from the two subvolumes was tested by varying the location of the overlapping matching image within the subvolume and examining the effect this had on the displacement relative to the reference volume. The displacement uncertainty resulting from matching two respiratory images using NCC ranged from 0.54 ± 0.10 mm per match to 0.32 ± 0.16 mm per match in the lung of the animal. The uncertainty was found to propagate in quadrature, increasing with number of NCC matches performed. In comparison, the minimum displacement achievable if two respiratory images were matched perfectly in phase ranged from 0.77 ± 0.06 to 0.93 ± 0.06 mm in the lung. The assumption that subvolumes from separate cine scan could be matched by matching a single overlapping 2D image between to subvolumes was validated. An in vivo animal model was developed to test an image-based 4D-CT algorithm. The uncertainties associated with using NCC to match the respiratory phase of two images were quantified and the assumption that a 4.0cm 3D subvolume can by matched in respiratory phase by matching a single 2D image from the 3D subvolume was validated. The work in this paper shows the image-based 4D-CT algorithm to be a promising method for producing 4D-CT images for radiotherapy.
机译:本文的目的是使用动物模型来量化空间位移的不确定性,并在体内测试基于图像的4D-CT算法的基本假设。使用以轴向电影模式运行的64层CT扫描仪(GE Healthcare)对6头Landrace杂交猪进行换气并成像。通过在图像采集过程中定期压接呼吸机回风管来改变猪的呼吸幅度模式。使用归一化互相关(NCC)作为匹配标准,将图像数据用于确定在相同呼吸阶段匹配CT图像所导致的位移不确定性。另外,通过改变两个子体积中重叠匹配图像的位置并检查效果,测试了仅使用两个子体积中的单个重叠2D切片将胸部4.0cm子体积的呼吸相位与参考子体积匹配的能力这是相对于参考体积的位移。使用NCC对两个呼吸图像进行匹配所导致的位移不确定性范围从每次匹配0.54±0.10 mm到每次匹配在动物肺部0.32±0.16 mm。发现不确定性以正交方式传播,随着执行的NCC匹配次数的增加而增加。相比之下,如果两个呼吸图像在肺中的相位在0.77±0.06至0.93±0.06 mm的范围内完美匹配,则可获得的最小位移。验证了通过将单个重叠的2D图像匹配到子体积可以匹配来自单独电影扫描的子体积的假设。开发了体内动物模型以测试基于图像的4D-CT算法。量化了与使用NCC匹配两个图像的呼吸相位相关的不确定性,并验证了通过匹配3D子体积中的单个2D图像可以在呼吸相位中匹配4.0cm 3D子体积的假设。本文的工作表明基于图像的4D-CT算法是产生放射疗法4D-CT图像的一种有前途的方法。

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