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Unsupervised Clustering of Dynamic PET Images on the Projection Domain

机译:未经监督的聚类动态宠物图像在投影域上

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Segmentation of dynamic PET images is an important preprocessing step for kinetic parameter estimation. A single time activity curve (TAC) is extracted for each segmented region. This TAC is then used to estimate the kinetic parameters of the segmented region. Current methods perform this task in two independent steps; first dynamic positron emission tomography (PET) images are reconstructed from the projection data using conventional tomographic reconstruction methods, then the time activity curves (TAC) of the pixels are clustered into a predetermined number of clusters. In this paper, we propose to cluster the regions of dynamic PET images directly on the projection data and simultaneously estimate the TAC of each cluster. This method does not require an intermediate step of tomographic reconstruction for each time frame. Therefore the dimensionality of the estimation problem is reduced. We compare the proposed method with weighted least squares (WLS) and expectation maximization with Gaussian mixtures methods (GMM-EM). Filtered backprojection is used to reconstruct the emission images required by these methods. Our simulation results show that the proposed method can substantially decrease the number of mislabeled pixels and reduce the root mean squared error (RMSE) of the cluster TACs.
机译:动态PET图像的分割是动力学参数估计的重要预处理步骤。针对每个分段区域提取单个时间活动曲线(TAC)。然后使用该TAC来估计分段区域的动力学参数。当前方法以两个独立的步骤执行此任务;使用传统的断层切换重建方法从投影数据重建第一动态正电子发射断层扫描(PET)图像,然后将像素的时间活动曲线(TAC)聚集成预定数量的簇。在本文中,我们建议在投影数据上直接聚集动态PET图像的区域,并同时估计每个簇的TAC。该方法不需要为每个时间帧进行断层切断重建的中间步骤。因此,减少了估计问题的维度。我们将提出的方法与加权最小二乘(WLS)的方法进行比较,并与高斯混合方法(GMM-EM)的预期最大化。过滤的反冲用于重建这些方法所需的发射图像。我们的仿真结果表明,该方法可以大大降低误标记像素的数量,并减少簇TAC的根均方误差(RMSE)。

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