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基于解剖边缘引导水平集先验的 PET 图像重建。

PET image reconstruction with anatomical edge guided level set prior.

机构信息

Department of Biomedical Engineering, University of California, Davis, CA 95616, USA.

出版信息

Phys Med Biol. 2011 Nov 7;56(21):6899-918. doi: 10.1088/0031-9155/56/21/009. Epub 2011 Oct 7.

DOI:10.1088/0031-9155/56/21/009
PMID:21983558
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3393853/
Abstract

Acquiring both anatomical and functional images during one scan, PET/CT systems improve the ability to detect and localize abnormal uptakes. In addition, CT images provide anatomical boundary information that can be used to regularize positron emission tomography (PET) images. Here we propose a new approach to maximum a posteriori reconstruction of PET images with a level set prior guided by anatomical edges. The image prior models both the smoothness of PET images and the similarity between functional boundaries in PET and anatomical boundaries in CT. Level set functions (LSFs) are used to represent smooth and closed functional boundaries. The proposed method does not assume an exact match between PET and CT boundaries. Instead, it encourages similarity between the two boundaries, while allowing different region definition in PET images to accommodate possible signal and position mismatch between functional and anatomical images. While the functional boundaries are guaranteed to be closed by the LSFs, the proposed method does not require closed anatomical boundaries and can utilize incomplete edges obtained from an automatic edge detection algorithm. We conducted computer simulations to evaluate the performance of the proposed method. Two digital phantoms were constructed based on the Digimouse data and a human CT image, respectively. Anatomical edges were extracted automatically from the CT images. Tumors were simulated in the PET phantoms with different mismatched anatomical boundaries. Compared with existing methods, the new method achieved better bias-variance performance. The proposed method was also applied to real mouse data and achieved higher contrast than other methods.

摘要

在一次扫描中同时获取解剖和功能图像,PET/CT 系统提高了检测和定位异常摄取的能力。此外,CT 图像提供了解剖边界信息,可用于正则化正电子发射断层扫描(PET)图像。在这里,我们提出了一种新的方法,通过基于解剖边缘的水平集先验来对 PET 图像进行最大后验重建。图像先验模型同时模拟了 PET 图像的平滑度以及 PET 中的功能边界与 CT 中的解剖边界之间的相似性。水平集函数(LSF)用于表示平滑且封闭的功能边界。所提出的方法不假设 PET 和 CT 边界之间存在精确匹配。相反,它鼓励两个边界之间的相似性,同时允许在 PET 图像中进行不同的区域定义,以适应功能和解剖图像之间可能存在的信号和位置不匹配。虽然 LSF 保证了功能边界是封闭的,但所提出的方法不需要封闭的解剖边界,并且可以利用从自动边缘检测算法获得的不完整边缘。我们进行了计算机模拟来评估所提出方法的性能。基于 Digimouse 数据和人体 CT 图像分别构建了两个数字体模。自动从 CT 图像中提取解剖边缘。在 PET 体模中模拟了具有不同不匹配解剖边界的肿瘤。与现有方法相比,新方法实现了更好的偏差方差性能。所提出的方法还应用于真实的老鼠数据,并实现了比其他方法更高的对比度。