首页> 外文会议>2013 IEEE Nuclear Science Symposium and Medical Imaging Conference >Direct reconstruction of CT-based attenuation correction images for PET with cluster-based penalties
【24h】

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

获取原文

摘要

Extremely low-dose CT acquisitions for the purpose of PET attenuation correction will have a high level of noise and biasing artifacts due to factors such as photon starvation. This work explores a priori knowledge appropriate for CT iterative image reconstruction for PET attenuation correction. We investigate the maximum a posteriori (MAP) framework with cluster-based, multinomial priors for the direct reconstruction of the PET attenuation map. The objective function for direct iterative attenuation map reconstruction was modeled as a Poisson log-likelihood with prior terms consisting of quadratic (Q) and mixture (M) distributions. The attenuation map is assumed to have values in 4 clusters: air+background, lung, soft tissue, and bone. Under this assumption, the MP was a mixture probability density function consisting of one exponential and three Gaussian distributions. The relative proportion of each cluster was jointly estimated during each voxel update of direct iterative coordinate decent (dICD) method. Noise-free data were generated from NCAT phantom and Poisson noise was added. Reconstruction with FBP (ramp filter) was performed on the noise-free (ground truth) and noisy data. For the noisy data, dICD reconstruction was performed with the combination of different prior strength parameters (β and γ) of Q- and M-penalties. The combined quadratic and mixture penalties reduces the RMSE by 18.7% compared to post-smoothed iterative reconstruction and only 0.7% compared to quadratic alone. For direct PET attenuation map reconstruction from ultra-low dose CT acquisitions, the combination of quadratic and mixture priors offers regularization of both variance and bias and is a potential method to derive attenuation maps with negligible patient dose. However, the small improvement in quantitative accuracy relative to the substantial increase in algorithm complexity does not currently justify the use of mixture-based PET attenuation priors for reconstruc- ion of CT images for PET attenuation correction.
机译:用于PET衰减校正的超低剂量CT采集将由于诸如光子饥饿之类的因素而产生高水平的噪声和伪影。这项工作探索适合CT迭代图像重建以进行PET衰减校正的先验知识。我们研究了基于簇的多项式先验的最大后验(MAP)框架,以直接重建PET衰减图。直接迭代衰减图重建的目标函数建模为泊松对数似然模型,其先验项由二次(Q)和混合(M)分布组成。假定衰减图的值在4个簇中:空气+背景,肺,软组织和骨骼。在此假设下,MP是由一个指数分布和三个高斯分布组成的混合概率密度函数。在直接迭代坐标体面(dICD)方法的每次体素更新期间,共同估算每个群集的相对比例。从NCAT幻象生成无噪声数据,并添加泊松噪声。 FBP(斜坡滤波器)的重建是在无噪声(地面真实)和噪声数据下进行的。对于嘈杂的数据,使用Q和M罚分的不同先验强度参数(β和γ)的组合进行dICD重建。与平滑后的迭代重建相比,二次和混合惩罚的组合使RMSE降低了18.7%,与仅二次得到的相比,则仅降低了0.7%。对于从超低剂量CT采集直接重建PET衰减图,二次方和混合先验相结合提供了方差和偏差的正则化,并且是一种可以忽略患者剂量而得出衰减图的潜在方法。但是,相对于算法复杂度的大幅提高,定量精度的小幅提高目前尚不足以将基于混合物的PET衰减先验用于重建CT图像以进行PET衰减校正的合理性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号