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Improved myocardial perfusion PET imaging with MRI learned dictionaries

机译:借助MRI学习词典改进的心肌灌注PET成像

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The purpose of this study is to form PET image reconstruction sparse priors based on MR image learned dictionaries in Bayesian PET image reconstruction and to evaluate the performance in myocardial perfusion (MP) defect detection. A set of time activity curves representing the typical patient Rb-82 bio-distribution was applied in the analytical simulation with 2.5-min and 4.5-min cumulated activities. For each count levels, we used the 4D XCAT phantom to simulate two MP imaging datasets, one with normal MP and the other with a reduced activity region on the left ventricle. Using the SIMRI simulator, MR images were simulated with sequence specified to be 3D T1-weighted as in a clinical PET/MRI protocol. The maximum a posterior (MAP) PET image reconstruction that took dictionary-based sparse approximation of PET images as the prior was applied. Assuming that the PET and MR images can be sparsified under the same dictionary, the K-SVD algorithm was used in the dictionary learning (DL) process from the MR images. The receiver operating characteristic (ROC) analysis on the reconstructed images for perfusion defect detection was performed using a channelized Hotelling observer (CHO). The DL MAP algorithm demonstrated improved noise versus bias tradeoff compared to that from the ML algorithm and also provided better performance in the MP defect detection task.
机译:这项研究的目的是基于贝叶斯PET图像重建中基于MR图像学习词典来形成PET图像重建稀疏先验,并评估心肌灌注(MP)缺陷检测的性能。一组代表典型患者Rb-82生物分布的时间活动曲线以2.5分钟和4.5分钟的累积活动应用于分析模拟。对于每个计数水平,我们使用4D XCAT幻像来模拟两个MP成像数据集,一个具有正常MP,另一个在左心室活动区减少。使用SIMRI模拟器,按照临床PET / MRI协议中指定的3D T1加权序列对MR图像进行仿真。应用了最大的后(MAP)PET图像重建,该重建采用了基于PET的基于字典的稀疏近似作为先验图像。假设可以在同一词典下稀疏PET和MR图像,则在MR图像的词典学习(DL)过程中使用了K-SVD算法。使用通道化的Hotelling观察器(CHO)对重建图像进行接收器操作特性(ROC)分析,以进行灌注缺陷检测。与ML算法相比,DL MAP算法表现出更好的噪声与偏置权衡,并且在MP缺陷检测任务中也提供了更好的性能。

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