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Joint Solution for PET Image Segmentation Denoising and Partial Volume Correction

机译:PET图像分割去噪和部分体积校正的联合解决方案

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摘要

Segmentation, denoising, and partial volume correction (PVC) are three major processes in the quantification of uptake regions in post-reconstruction PET images. These problems are conventionally addressed by independent steps. In this study, we hypothesize that these three processes are dependent; therefore, jointly solving them can provide optimal support for quantification of the PET images. To achieve this, we utilize interactions among these processes when designing solutions for each challenge. We also demonstrate that segmentation can help in denoising and PVC by locally constraining the smoothness and correction criteria. For denoising, we adapt generalized Anscombe transformation to Gaussianize the multiplicative noise followed by a new adaptive smoothing algorithm called regional mean denoising. For PVC, we propose a volume consistency-based iterative voxel-based correction algorithm in which denoised and delineated PET images guide the correction process during each iteration precisely. For PET image segmentation, we use affinity propagation (AP)-based iterative clustering method that helps the integration of PVC and denoising algorithms into the delineation process. Qualitative and quantitative results, obtained from phantoms, clinical, and pre-clinical data, show that the proposed framework provides an improved and joint solution for segmentation, denoising, and partial volume correction.
机译:分割,去噪和部分体积校正(PVC)是定量重建后PET图像中摄取区域的三个主要过程。这些问题通常通过独立步骤解决。在这项研究中,我们假设这三个过程是相互依赖的。因此,共同解决它们可以为PET图像的量化提供最佳支持。为此,在为每个挑战设计解决方案时,我们利用这些流程之间的相互作用。我们还证明了分割可以通过局部限制平滑度和校正标准来帮助降噪和PVC。对于降噪,我们采用广义Anscombe变换对乘性噪声进行高斯化,然后采用一种称为区域均值去噪的新型自适应平滑算法。对于PVC,我们提出了一种基于体积一致性的,基于迭代体素的校正算法,其中经过去噪和描绘的PET图像精确地指导了每次迭代期间的校正过程。对于PET图像分割,我们使用基于亲和力传播(AP)的迭代聚类方法,该方法有助于将PVC和去噪算法集成到描绘过程中。从体模,临床和临床前数据获得的定性和定量结果表明,提出的框架为分割,降噪和部分体积校正提供了一种改进的联合解决方案。

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