N. da Silva, M. Gaens, U. Pietrzyk, P. Almeida, H. Herzog
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引用次数: 2
摘要
在正电子发射断层扫描(PET)中,可采用后滤波步骤来降低图像噪声。为此,经常使用高斯形状的移动平均滤波器。然而,这种滤波器降低了空间分辨率,增加了相邻结构之间的溢出。当处理小结构(如颈动脉)时,这些影响变得重要,目的是获得图像派生输入函数(IDIF)。在这项工作中,提出了一种涉及分割磁共振图像(MRI)解剖信息的双边滤波器。为了测试该滤波器,使用GATE (Geant4 Application for Tomographic Emission)对BrainPET扫描仪的动态FDG图像进行了模拟。为了评价该滤波器,计算了IDIF的信噪比(SNR)。此外,研究了三种估计IDIF的方法,它们基于:i)颈动脉感兴趣体积(VOl)平均值,ii)颈动脉VOl中每个平面的最热体素和iii)颈动脉VOl中最热体素。这些方法用曲线下面积(AVe)和部分体积系数进行评估。结果表明,双边滤波器提高了信噪比,减小了模拟和估计IDIF之间的差异。综上所述,与移动平均高斯滤波相比,该滤波降低了PVE,提高了信噪比。
Bilateral filter for image derived input function in MR-BrainPET
In positron emission tomography (PET) a post-filtering step may be used to reduce image noise. For that purpose a moving average filter with a Gaussian shape is frequently used. However, such a filter decreases the spatial resolution and increases the spillover between adjacent structures. These effects become important when dealing with small structures such as the carotid arteries with the aim to derive an image derived input function (IDIF). In this work, a bilateral filter which involves the anatomical information from a segmented magnetic resonance image (MRI) is proposed. To test the filter, dynamic FDG images were simulated with GATE (Geant4 Application for Tomographic Emission) for the BrainPET scanner. To evaluate the filter, the signal to noise ratio (SNR) of the IDIF was calculated. Moreover, three approaches to estimate the IDIF were examined, which were based on: i) the carotid volume of interest (VOl) average, ii) the hottest voxels per plane in carotid VOl and iii) the hottest voxels in the carotid VOl. These were evaluated with the area under the curve (AVe) as well as with partial volume coefficients. The results show that the bilateral filter increases the SNR and reduces the differences between the simulated and estimated IDIF. In conclusion, compared to moving average Gaussian filtering the proposed filter reduces the PVE and increases the SNR.