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Joint estimation of activity and attenuation in PET/MR using MR-constrained Gaussian priors

机译:利用MR约束高斯教师在PET / MR中的活动和衰减的联合估计

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The maximum likelihood estimation of attenuation and activity (MLAA) has been proposed to jointly estimate activity and attenuation from emission data only. In this paper, we proposed an improved MLAA algorithm by imposing MR spatial and CT statistical constraints on the estimation of attenuation using a constrained Gaussian mixture model (GMM) and a Markov random field (MRF) smoothness prior. We compare the proposed MLAA-GMM algorithm with the MLAA algorithms proposed by Rezaei et al and Salomon et al as well as 4-class MRAC method. Dixon MR images were segmented into outside air, fat and soft tissue classes and an MR low-intensity class corresponding to air cavities, bone and susceptibility artifacts. To eliminate the miss-classification of bones with surrounding tissue, the unknown class was expanded by a co-registered bone probability map. A mixture of 4 Gaussians (air, fat/soft and bone) was used for the unknown class, while unimodal Gaussians were used for others. The algorithms were evaluated using simulation and clinical datasets. The bias in estimated attenuation and activity was evaluated against CT-based attenuation correction. Our results show that MLAA-Rezaei suffers from scale and noise problems. The performance of MLAA-Salomon algorithm is also affected by the scale and depends highly on MR quality and segmentation, especially at air/bone interfaces and vertebra. It was demonstrated the MLAA-GMM effectively exploits MR prior information, thereby results in noise-, crosstalk- and scale-free attenuation maps. The PET bias analyses showed that the MLAA-GMM outperformed the scale corrected MLAA-Rezaei and MLAA-Salomon algorithms as well as the 4-class MRAC method. Therefore, the proposed method can pave the way toward accurate emission-based estimation of attenuation in TOF PET/MR imaging.
机译:已经提出了衰减和活性(MLAA)的最大似然估计,以共同估计活性并仅从发射数据衰减。在本文中,通过在使用约束的高斯混合模型(GMM)和Markov随机场(MRF)平滑度之前,通过对衰减的估计来估计MR空间和CT统计约束来提出改进的MLAA算法。我们将提议的MLAA-GMM算法与Rezaei等,Salomon等,以及4级MRAC方法进行比较MLAA-GMM算法。将Dixon MR图像分段为外部空气,脂肪和软组织类和对应于空气腔,骨骼和易感性伪影的MR低强度等级。为了消除围绕组织的骨骼的错过分类,未知类由共同登记的骨概率图扩展。对于未知课程使用4个高斯(空气,脂肪/柔软和骨骼)的混合物,而单位式高斯为他人使用了单峰高斯。使用仿真和临床数据集进行评估算法。评估了估计衰减和活性的偏差,用于针对基于CT基衰减校正。我们的结果表明,MLAA-Rezaei患有规模和噪音问题。 MLAA-Salomon算法的性能也受到规模的影响,并且依赖于MR质量和分段,特别是在空气/骨界面和椎骨。它被证明了MLAA-GMM有效利用先生先生的信息,从而导致噪声,串扰和无规模的衰减图。宠物偏置分析表明,MLAA-GMM优于规模校正的MLAA-REZAEI和MLAA-SALOMON算法以及4级MRAC方法。因此,所提出的方法可以为TOF PET / MR成像中准确地发射的衰减估计铺平道路。

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