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首页> 外文期刊>Medical Imaging, IEEE Transactions on >A Spatio-Temporal Deconvolution Method to Improve Perfusion CT Quantification
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A Spatio-Temporal Deconvolution Method to Improve Perfusion CT Quantification

机译:时空反卷积方法提高灌注CT量化

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Perfusion imaging is a useful adjunct to anatomic imaging in numerous diagnostic and therapy-monitoring settings. One approach to perfusion imaging is to assume a convolution relationship between a local arterial input function and the tissue enhancement profile of the region of interest via a “residue function” and subsequently solve for this residue function. This ill-posed problem is generally solved using singular-value decomposition based approaches, and the hemodynamic parameters are solved for each voxel independently. In this paper, we present a formulation which incorporates both spatial and temporal correlations, and show through simulations that this new formulation yields higher accuracy and greater robustness with respect to image noise. We also show using rectal cancer tumor images that this new formulation results in better segregation of normal and cancerous voxels.
机译:在许多诊断和治疗监测设置中,灌注成像是解剖成像的有用辅助手段。灌注成像的一种方法是通过“残差函数”假设局部动脉输入功能与目标区域的组织增强特征之间的卷积关系,然后求解该残差功能。通常使用基于奇异值分解的方法来解决该不适的问题,并且分别为每个体素解决血液动力学参数。在本文中,我们提出了一种结合了空间和时间相关性的公式,并通过仿真表明,这种新公式相对于图像噪声具有更高的准确性和更强的鲁棒性。我们还使用直肠癌肿瘤图像显示,这种新配方可更好地隔离正常和癌瘤体素。

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