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An algorithm to estimate the object support in truncated images

机译:估计截断图像中对象支持的算法

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Purpose: Truncation artifacts in CT occur if the object to be imaged extends past the scanner field of view (SFOV). These artifacts impede diagnosis and could possibly introduce errors in dose plans for radiation therapy. Several approaches exist for correcting truncation artifacts, but existing correction algorithms do not accurately recover the skin line (or support) of the patient, which is important in some dose planning methods. The purpose of this paper was to develop an iterative algorithm that recovers the support of the object.Methods: The authors assume that the truncated portion of the image is made up of soft tissue of uniform CT number and attempt to find a shape consistent with the measured data. Each known measurement in the sinogram is interpreted as an estimate of missing mass along a line. An initial estimate of the object support is generated by thresholding a reconstruction made using a previous truncation artifact correction algorithm (e.g., water cylinder extrapolation). This object support is iteratively deformed to reduce the inconsistency with the measured data. The missing data are estimated using this object support to complete the dataset. The method was tested on simulated and experimentally truncated CT data.Results: The proposed algorithm produces a better defined skin line than water cylinder extrapolation. On the experimental data, the RMS error of the skin line is reduced by about 60%. For moderately truncated images, some soft tissue contrast is retained near the SFOV. As the extent of truncation increases, the soft tissue contrast outside the SFOV becomes unusable although the skin line remains clearly defined, and in reformatted images it varies smoothly from slice to slice as expected. Conclusions: The support recovery algorithm provides a more accurate estimate of the patient outline than thresholded, basic water cylinder extrapolation, and may be preferred in some radiation therapy applications.
机译:目的:如果要成像的对象超出扫描仪视野(SFOV),则会在CT中出现截断伪像。这些伪影会妨碍诊断,并可能在放射治疗的剂量计划中引入错误。存在几种用于校正截断伪影的方法,但是现有的校正算法不能准确地恢复患者的皮肤线(或支撑),这在某些剂量计划方法中很重要。方法:作者假设图像的截断部分由具有相同CT数的软组织组成,并试图找到与图像的形状相符的形状。测量数据。正弦图中的每个已知测量值都解释为沿线的缺失质量的估计值。通过对使用先前的截断伪影校正算法(例如,水缸外推法)进行的重构进行阈值化来生成对象支撑的初始估计。该对象支架经过反复变形,以减少与测量数据的不一致。使用此对象支持来估计丢失的数据以完成数据集。结果:与水缸外推法相比,该算法产生的轮廓线更清晰。根据实验数据,皮肤线的RMS误差降低了约60%。对于中度截断的图像,SFOV附近保留了一些软组织对比度。随着截断程度的增加,SFOV外部的软组织对比度变得无法使用,尽管仍然清晰地定义了皮肤线,并且在重新格式化的图像中,它在切片之间的变化如预期的那样平稳。结论:支持恢复算法比阈值基本水缸外推法能更准确地估计患者轮廓,在某些放射治疗应用中可能更可取。

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