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Maximum-likelihood estimation of scatter components algorithm for x-ray coherent scatter computed tomography of the breast

机译:X射线相干散射计算机断层扫描的散射分量算法的最大似然估计

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摘要

Coherent scatter computed tomography (CSCT) is a reconstructive x-ray imaging technique that yields the spatially resolved coherent-scatter cross section of the investigated object revealing structural information of tissue under investigation. In the original CSCT proposals the reconstruction of images from coherently scattered x-rays is done at each scattering angle separately using analytic reconstruction. In this work we develop a maximum likelihood estimation of scatter components algorithm (ML-ESCA) that iteratively reconstructs images using a few material component basis functions from coherent scatter projection data. The proposed algorithm combines the measured scatter data at different angles into one reconstruction equation with only a few component images. Also, it accounts for data acquisition statistics and physics, modeling effects such as polychromatic energy spectrum and detector response function. We test the algorithm with simulated projection data obtained with a pencil beam setup using a new version of MC-GPU code, a Graphical Processing Unit version of PENELOPE Monte Carlo particle transport simulation code, that incorporates an improved model of x-ray coherent scattering using experimentally measured molecular interference functions. The results obtained for breast imaging phantoms using adipose and glandular tissue cross sections show that the new algorithm can separate imaging data into basic adipose and water components at radiation doses comparable with Breast Computed Tomography. Simulation results also show the potential for imaging microcalcifications. Overall, the component images obtained with ML-ESCA algorithm have a less noisy appearance than the images obtained with the conventional filtered back projection algorithm for each individual scattering angle. An optimization study for x-ray energy range selection for breast CSCT is also presented.
机译:相干散射计算机断层扫描(CSCT)是一种重建性X射线成像技术,可产生被调查对象的空间分辨相干散射截面,从而揭示正在研究的组织的结构信息。在最初的CSCT建议中,使用解析重建分别在每个散射角度从相干散射的X射线重建图像。在这项工作中,我们开发了散射分量的最大似然估计算法(ML-ESCA),该算法使用来自相干散射投影数据的一些材料分量基函数来迭代地重建图像。所提出的算法将在不同角度下测得的散射数据合并为一个仅包含少量分量图像的重建方程。此外,它还考虑了数据采集统计数据和物理学,建模效果(例如多色能谱和检测器响应函数)。我们使用新版本的MC-GPU代码(PENELOPE蒙特卡洛粒子传输模拟代码的图形处理单元版本)通过铅笔束设置获得的模拟投影数据对算法进行测试,该算法结合了改进的X射线相干散射模型实验测量的分子干扰功能。使用脂肪和腺组织横截面对乳房幻像进行成像所获得的结果表明,该新算法可以以与乳腺计算机断层摄影术相当的辐射剂量将成像数据分为基本脂肪和水成分。仿真结果还显示了对微钙化成像的潜力。总体而言,对于每个单独的散射角,与使用常规滤波反投影算法获得的图像相比,使用ML-ESCA算法获得的分量图像的噪声外观更少。还介绍了针对乳腺癌CSCT的X射线能量范围选择的优化研究。

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