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Kernel-Based Reconstruction of C-11-Hydroxyephedrine Cardiac PET Images of the Sympathetic Nervous System

机译:基于核的交感神经系统C-11-羟麻黄碱心脏PET图像重建

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Image reconstruction for positron emission tomography (PET) can be challenging and the resulting image typically has high noise. The kernel-based reconstruction method [1], incorporates prior anatomic information in the reconstruction algorithm to reduce noise while preserving resolution. Prior information is incorporated in the reconstruction algorithm by means of spatial kernels originally used in machine learning. In this paper, the kernel-based method is used to reconstruct PET images of sympathetic innervation in the heart. The resulting images are compared with standard Ordered Subset Expectation Maximization (OSEM) reconstructed images qualitatively and quantitatively using data from 6 human subjects. The kernel-based method demonstrated superior SNR with preserved contrast and accuracy compared to OSEM.
机译:用于正电子发射断层扫描(PET)的图像重建可能具有挑战性,并且生成的图像通常具有高噪声。基于核的重建方法[1],在重建算法中结合了先验的解剖学信息,以在保持分辨率的同时减少噪声。通过机器学习中最初使用的空间核将先验信息结合到重建算法中。在本文中,基于核的方法用于重建心脏中交感神经的PET图像。使用来自6个人类受试者的数据,定性和定量地将所得图像与标准有序子集期望最大化(OSEM)重建图像进行比较。与OSEM相比,基于内核的方法显示出出色的SNR,并保留了对比度和准确性。

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