首页> 外文会议>2011 8th IEEE International Symposium on Biomedical Imaging: From Nano to Macro >Iterative image reconstruction for dual-energy X-ray CT using regularized material sinogram estimates
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Iterative image reconstruction for dual-energy X-ray CT using regularized material sinogram estimates

机译:使用正则材料正弦图估计的双能X射线CT迭代图像重建

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X-ray CT images have various applications, including CT-based attenuation correction (CTAC) for PET. Low-dose CT imaging is particularly desirable for CTAC. Dual-energy (DE) CT imaging methods may improve the accuracy of attenuation correction in PET. However, conventional DE CT approaches to sinogram material decomposition use logarithmic transforms that are sensitive to noise in low-dose scans. This paper describes a DE reconstruction method based on statistical models that avoids using a logarithm. We first estimate material sinograms directly from the raw DE data (without any logarithm), with mild regularization to control noise and avoid outliers. We then apply a penalized weighted least squares (PWLS) method to reconstruct images of the two material components. We also propose a joint edge-preserving regularizer that uses the prior knowledge that the two material images have many region edges located in the same positions. Preliminary simulation results suggest that this iterative method improves image quality compared to conventional approaches based on log data for low-dose DE CT scans.
机译:X射线CT图像具有多种应用,包括用于PET的基于CT的衰减校正(CTAC)。低剂量CT成像对于CTAC特别理想。双能(DE)CT成像方法可以提高PET衰减校正的准确性。但是,常规的DE CT进行正弦图材料分解的方法使用对数变换,该变换对小剂量扫描中的噪声敏感。本文介绍了一种基于统计模型的DE重建方法,该方法避免使用对数。我们首先直接从原始DE数据(不带任何对数)估计材料正弦图,并进行适度的正则化以控制噪声并避免离群值。然后,我们应用惩罚加权最小二乘(PWLS)方法来重构这两个材料成分的图像。我们还提出了一种联合边缘保留正则化器,该规则化器使用了两个材料图像在相同位置具有许多区域边缘的先验知识。初步的仿真结果表明,与基于低剂量DE CT扫描的日志数据的常规方法相比,该迭代方法可提高图像质量。

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