首页> 外文会议>Image Processing pt.3; Progress in Biomedical Optics and Imaging; vol.7 no.30 >Adaptive conductance filtering for spatially varying noise in PET images
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Adaptive conductance filtering for spatially varying noise in PET images

机译:自适应电导滤波,用于PET图像中空间变化的噪声

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PET images that have been reconstructed with unregularized algorithms are commonly smoothed with linear Gaussian filters to control noise. Since these filters are spatially invariant, they degrade feature contrast in the image, compromising lesion detectability. Edge-preserving smoothing filters can differentially preserve edges and features while smoothing noise. These filters assume spatially uniform noise models. However, the noise in PET images is spatially variant, approximately following a Poisson behavior. Therefore, different regions of a PET image need smoothing by different amounts. In this work, we introduce an adaptive filter, based on anisotropic diffusion, designed specifically to overcome this problem. In this algorithm, the diffusion is varied according to a local estimate of the noise using either the local median or the grayscale image opening to weight the conductance parameter. The algorithm is thus tailored to the task of smoothing PET images, or any image with Poisson-like noise characteristics, by adapting itself to varying noise while preserving significant features in the image. This filter was compared with Gaussian smoothing and a representative anisotropic diffusion method using three quantitative task-relevant metrics calculated on simulated PET images with lesions in the lung and liver. The contrast gain and noise ratio metrics were used to measure the ability to do accurate quantitation; the Channelized Hotelling Observer lesion detectability index was used to quantify lesion detectability. The adaptive filter improved the signal-to-noise ratio by more than 45% and lesion detectability by more than 55% over the Gaussian filter while producing "natural" looking images and consistent image quality across different anatomical regions.
机译:通常使用线性高斯滤波器对用非正规算法重建的PET图像进行平滑处理,以控制噪声。由于这些滤镜在空间上是不变的,因此会降低图像中的特征对比度,从而损害病变的可检测性。保留边缘的平滑滤波器可以差异化地保留边缘和特征,同时平滑噪声。这些滤波器采用空间均匀的噪声模型。但是,PET图像中的噪声在空间上是变化的,大约遵循泊松行为。因此,PET图像的不同区域需要以不同的量平滑。在这项工作中,我们介绍了一种基于各向异性扩散的自适应滤波器,专门用于解决此问题。在该算法中,使用局部中值或灰度图像打开以根据电导率参数加权,根据噪声的局部估计来改变扩散。因此,通过使自己适应变化的噪声,同时保留图像中的重要特征,可以使算法适合于平滑PET图像或具有类似泊松噪声特征的任何图像的任务。该过滤器与高斯平滑法和代表性的各向异性扩散方法进行了比较,该方法使用了在模拟的PET图像上计算出的三个定量任务相关指标来评估肺部和肝脏的病变。对比增益和噪声比指标用于测量进行准确定量的能力; Channelized Hotelling Observer病灶可检测性指数用于量化病灶可检测性。与高斯滤波器相比,自适应滤波器将信噪比提高了45%以上,病变检测能力提高了55%以上,同时在不同的解剖区域产生了“自然”外观的图像和一致的图像质量。

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