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Evaluation of Methods to Produce an Image Library for Automatic Patient Model Localization for Dose Mapping During Fluoroscopically-Guided Procedures

机译:荧光镜引导程序中用于剂量映射的自动患者模型定位图像库生成方法的评估

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The purpose of this work is to evaluate methods for producing a library of 2D-radiographic images to be correlated to clinical images obtained during a fluoroscopically-guided procedure for automated patient-model localization. The localization algorithm will be used to improve the accuracy of the skin-dose map superimposed on the 3D patient-model of the real-time Dose-Tracking-System (DTS). For the library, 2D images were generated from CT datasets of the SK-150 anthropomorphic phantom using two methods: Schmid's 3D-visualization tool and Plastimatch's digitally-reconstructed-radiograph (DRR) code. Those images, as well as a standard 2D-radiographic image, were correlated to a 2D-fluoroscopic image of a phantom, which represented the clinical-fluoroscopic image, using the Corr2 function in Matlab. The Corr2 function takes two images and outputs the relative correlation between them, which is fed into the localization algorithm. Higher correlation means better alignment of the 3D patient-model with the patient image. In this instance, it was determined that the localization algorithm will succeed when Corr2 returns a correlation of at least 50%. The 3D-visualization tool images returned 55-80% correlation relative to the fluoroscopic-image, which was comparable to the correlation for the radiograph. The DRR images returned 61-90% correlation, again comparable to the radiograph. Both methods prove to be sufficient for the localization algorithm and can be produced quickly; however, the DRR method produces more accurate grey-levels. Using the DRR code, a library at varying angles can be produced for the localization algorithm.
机译:这项工作的目的是评估用于生成2D射线照相图像库的方法,该库与在自动患者模型定位的荧光镜引导过程中获得的临床图像相关。定位算法将用于提高叠加在实时剂量跟踪系统(DTS)的3D患者模型上的皮肤剂量图的准确性。对于该库,使用以下两种方法从SK-150拟人幻像的CT数据集生成2D图像:施密德(Schmid)的3D可视化工具和Plastimatch的数字重建射线照相(DRR)代码。使用Matlab中的Corr2函数,将这些图像以及标准的2D射线照相图像与体模的2D透视图像相关联,该2D透视图像表示临床透视图像。 Corr2函数拍摄两张图像并输出它们之间的相对相关性,然后将其输入到定位算法中。更高的相关性意味着3D患者模型与患者图像的更好对齐。在这种情况下,确定当Corr2返回至少50%的相关性时,定位算法将成功。 3D可视化工具图像相对于荧光镜图像返回了55-80%的相关性,这与射线照片的相关性相当。 DRR图像返回61-90%的相关性,再次与射线照片相当。两种方法都证明足以用于定位算法,并且可以快速生产。但是,DRR方法会产生更准确的灰度级。使用DRR代码,可以为本地化算法生成不同角度的库。

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