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Detail-Preserving PET Reconstruction with Sparse Image Representation and Anatomical Priors

机译:具有稀疏图像表示和解剖先验的保留细节的PET重建

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Positron emission tomography (PET) reconstruction is an ill-posed inverse problem which typically involves fitting a high-dimensional forward model of the imaging process to noisy, and sometimes undersam-pled photon emission data. To improve the image quality, prior information derived from anatomical images of the same subject has been previously used in the penalised maximum likelihood (PML) method to regularise the model complexity and selectively smooth the image on a voxel basis in PET reconstruction. In this work, we propose a novel perspective of incorporating the prior information by exploring the sparse property of natural images. Instead of a regular voxel grid, the sparse image representation jointly determined by the prior image and the PET data is used in reconstruction to leverage between the image details and smoothness, and this prior is integrated into the PET forward model and has a closed-form expectation maximisation (EM) solution. Simulations show that the proposed approach achieves improved bias versus variance trade-off and higher contrast recovery than the current state-of-the-art methods, and preserves the image details better. Application to clinical PET data shows promising results.
机译:正电子发射断层扫描(PET)重建是一个不适定的逆问题,通常涉及将成像过程的高维正向模型拟合到嘈杂的,有时采样不足的光子发射数据。为了改善图像质量,先前从同一个对象的解剖图像中获得的先验信息已在受罚最大似然(PML)方法中使用,以规范化模型的复杂性并在PET重建中基于体素选择性地平滑图像。在这项工作中,我们提出了一种新颖的观点,即通过探索自然图像的稀疏特性来合并先验信息。由常规图像和PET数据共同确定的稀疏图像表示代替常规的体素网格,用于重建以在图像细节和平滑度之间发挥杠杆作用,并且将该优先级集成到PET正向模型中并具有封闭形式期望最大化(EM)解决方案。仿真表明,与当前的最新技术方法相比,所提出的方法可改善偏差与方差的权衡,并具有更高的对比度恢复能力,并能更好地保留图像细节。将其应用于临床PET数据显示出可喜的结果。

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