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Nonlocal-Means Approaches to Anatomy-Based PET Image Reconstruction

机译:非局部算法基于解剖学的PET图像重建方法

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We propose nonlocal-means (NLM) approaches to incorporating prior anatomical information into PET image reconstruction. In our NLM approaches, adaptive smoothing is performed on the PET image by using the weights that reflect the self-similarity property of the underlying PET image with the aid of the additional information obtained from the anatomical image. Unlike conventional anatomy-based reconstruction methods, our methods using the anatomy-based NLM priors do not require additional processes to extract anatomical boundaries or segmented regions. In this work we apply the NLM algorithm to both the maximum a posteriori (MAP) and the minimum cross entropy (MXE) reconstruction methods. Our experimental results demonstrate that, compared to the conventional methods based on local smoothing, our methods based on the nonlocal means algorithm remarkably improve the reconstruction accuracy in terms of both percentage error and regional bias even with imperfect anatomical information or in the presence of signal mismatch between the PET image and the anatomical image.
机译:我们提出了非本能 - 装置(NLM)方法,将先前解剖信息纳入PET图像重建。在我们的NLM方法中,通过使用从解剖图像获得的附加信息反映底层PET图像的自相似性的权重来执行自适应平滑。与传统的基于解剖学的重建方法不同,我们使用基于解剖学的NLM前导者的方法不需要额外的方法来提取解剖学边界或分段区域。在这项工作中,我们将NLM算法应用于最大后验(MAP)和最小跨熵(MXE)重建方法。我们的实验结果表明,与基于局部平滑的传统方法相比,我们的基于非识别方法算法的方法显着提高了百分比误差和区域偏见的重建准确性,即使具有不完美的解剖信息或在信号不匹配的情况下也是如此在宠物图像和解剖图像之间。

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