基于MRI的PET/MRI衰减校正,采用MRF分割和稀疏回归估计CT

Yasheng Chen, Meher R. Juttukonda, Yueh Z. Lee, Yi Su, Felipe Espinoza, Weili Lin, D. Shen, David Lulash, H. An
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引用次数: 9

摘要

基于核磁共振的衰减校正(AC)是充分利用最近推出的混合PET/MRI扫描仪的先决条件。仅根据MR解剖图像分配衰减系数仍然具有挑战性。在这项研究中,我们试图开发一种基于隐马尔可夫随机场分割(hMRFS)和稀疏回归(SR)的新方法,从T1w图像中估计头部PET重建中AC的CT。采用患者特异性PET模拟对所提出方法的性能进行了评估。利用本文提出的衰减图(μprop)、平均图谱(μatlas)和CT分割方法(又称银标准)的衰减图,对重建的PET图像的相对误差的平均绝对误差(MARE)和全宽度十分之一最大值(FWTM)进行了比较,发现本文提出的方法在重建的PET图像的误差中产生了明显较低的MARE和FWTM。因此,即使单独使用T1w对比度,我们也能够达到与先前使用多光谱MRI数据的报告相当的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MRI based attenuation correction for PET/MRI via MRF segmentation and sparse regression estimated CT
MR-based attenuation correction (AC) is a prerequisite to fully harnessing the power of the recently introduced hybrid PET/MRI scanner. Assigning attenuation coefficients based upon MR anatomical images alone remains challenging. In this study, we sought to develop a novel approach based upon hidden Markov random field segmentation (hMRFS) and sparse regression (SR) to estimate CT from T1w images for AC in PET reconstruction in the head. The performance of the proposed method was evaluated using patient-specific PET simulation. We compared the mean absolute (MARE) and full width tenth maximum (FWTM) of relative errors of the reconstructed PET images using attenuation maps from the proposed (μprop), averaged atlas (μatlas) and CT segmentation methods (a.k.a. silver standard) and found that our proposed approach produced significantly lower MARE and FWTM in the errors of the reconstructed PET images. Thus, even with T1w contrast alone, we are able to achieve the accuracy on a par with the previous reports using multispectral MRI data.
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