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Direct Reconstruction of CT-based Attenuation Correction Images for PET with Cluster-Based Penalties

机译:基于簇的罚分直接重建基于CT的PET衰减校正图像

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摘要

Extremely low-dose CT acquisitions used for PET attenuation correction have high levels of noise and potential bias artifacts due to photon starvation. This work explores the use of a priori knowledge for iterative image reconstruction of the CT-based attenuation map. We investigate a maximum a posteriori framework with cluster-based multinomial penalty for direct iterative coordinate decent (dICD) reconstruction of the PET attenuation map. The objective function for direct iterative attenuation map reconstruction used a Poisson log-likelihood data fit term and evaluated two image penalty terms of spatial and mixture distributions. The spatial regularization is based on a quadratic penalty. For the mixture penalty, we assumed that the attenuation map may consist of four material clusters: air+background, lung, soft tissue, and bone. Using simulated noisy sinogram data, dICD reconstruction was performed with different strengths of the spatial and mixture penalties. The combined spatial and mixture penalties reduced the RMSE by roughly 2 times compared to a weighted least square and filtered backprojection reconstruction of CT images. The combined spatial and mixture penalties resulted in only slightly lower RMSE compared to a spatial quadratic penalty alone. For direct PET attenuation map reconstruction from ultra-low dose CT acquisitions, the combination of spatial and mixture penalties offers regularization of both variance and bias and is a potential method to reconstruct attenuation maps with negligible patient dose. The presented results, using a best-case histogram suggest that the mixture penalty does not offer a substantive benefit over conventional quadratic regularization and diminishes enthusiasm for exploring future application of the mixture penalty.
机译:用于PET衰减校正的超低剂量CT采集具有高水平的噪声和由于光子饥饿而导致的潜在偏差伪影。这项工作探索了先验知识在基于CT的衰减图的迭代图像重建中的应用。我们研究最大后验框架与基于簇的多项式罚分,用于PET衰减图的直接迭代坐标系(dICD)重建。直接迭代衰减图重建的目标函数使用泊松对数似然数据拟合项,并评估了空间分布和混合分布的两个图像惩罚项。空间正则化基于二次惩罚。对于混合惩罚,我们假设衰减图可能由四个材料簇组成:空气+背景,肺,软组织和骨骼。使用模拟的噪声正弦图数据,以不同的空间和混合惩罚强度执行dICD重建。与加权最小二乘和滤波后的CT投影重建相比,合并的空间和混合罚分将RMSE降低了大约2倍。与单独的空间二次惩罚相比,组合的空间惩罚和混合惩罚导致的RMSE略低。对于从超低剂量CT采集直接重建PET衰减图,空间和混合罚分的组合可提供方差和偏差的正则化,并且是一种可忽略的患者剂量来重建衰减图的潜在方法。使用最佳情况直方图显示的结果表明,混合罚分比常规的二次正则化没有实质性的好处,并且降低了探索混合罚分未来应用的热情。

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