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Fuzzy-logic adaptive neural networks for nuclear medicine image restorations

机译:核医学图像复原的模糊逻辑自适应神经网络

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A novel neural network with adaptive fuzzy logic rule is proposed for image restoration as required for quantitative imaging using a nuclear gamma camera. The overall aims is to compensate for image degradation due to photon scattering and photon penetration through the collimated gamma camera to allow more accurate measurement of radiotracers in vivo. In this work, fuzzy rules are generated to train a membership function using a least mean squares (LMS) algorithm. This membership function allows one to describe rules to differentiate gray levels differences, so that the regularizer parameter can be optimally adjusted, based on the fuzzy membership value. The relative performance of this algorithm is compared to a previously reported neural network based hybrid filter by the authors (Wei Qian et al., 1993-8) using both simulated images with different noise levels and experimentally acquired nuclear images using a gamma camera. The improved signal to noise ratio (/spl Delta/SNR) is used for quantitative measurement. The proposed method has proved to be useful in quantitative imaging using a gamma camera for the planar and tomographic imaging mode using single photon emitters, beta emitters (bremsstrahlung detection) and positron 511 keV imaging.
机译:提出了一种具有自适应模糊逻辑规则的新型神经网络,用于根据核伽马相机进行定量成像所需的图像恢复。总体目标是补偿由于光子散射和光子穿过准直伽马相机而造成的图像退化,从而可以更精确地测量体内的放射性示踪剂。在这项工作中,使用最小均方(LMS)算法生成模糊规则来训练隶属函数。这种隶属度函数允许人们描述区分灰度差异的规则,从而可以基于模糊隶属度值对调节器参数进行最佳调整。作者将该算法的相对性能与先前报道的基于神经网络的混合滤波器(Wei Qian等,1993-8)进行了比较,既使用了具有不同噪声水平的模拟图像,又使用了伽马相机通过实验获得了核图像。改进的信噪比(/ spl Delta / SNR)用于定量测量。事实证明,所提出的方法在使用伽马相机进行定量成像时非常有用,可用于使用单光子发射器,β发射器(bre致辐射检测)和正电子511 keV成像的平面和断层成像模式。

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