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PET IMAGE RECONSTRUCTION USING ANATOMICAL INFORMATION THROUGH MUTUAL INFORMATION BASED PRIORS: A SCALE SPACE APPROACH

机译:使用基于先验信息的解剖学信息重建PET图像:一种规模空间方法

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We propose a mutual information based prior for incorporating information from co-registered anatomical images into PET image reconstruction. The prior uses mutual information between feature vectors that are extracted from the anatomical and functional images using a scale space approach. We perform simulations on a realistic 3D phantom generated by replicating a 2-D autoradiographic cross section of a mouse labelled with F18-FDG. A digital photograph of the cryosection of the same slice is used to generate the anatomical image. The images are registered using mutual information based rigid registration. PET data are then simulated from the autoradiography based phantom. We use a preconditioned conjugate gradient algorithm to compute the PET image that maximizes the posterior density. The performance of this method is compared with that using a Gaussian quadratic penalty, which does not use anatomical information. Simulation results indicate that the mutual information based prior can achieve reduced standard deviation at comparable bias compared to the quadratic penalty
机译:我们提出了一种基于相互信息的先验技术,用于将来自共同注册的解剖图像的信息合并到PET图像重建中。先验者使用比例空间方法使用从解剖图像和功能图像中提取的特征向量之间的互信息。我们对逼真的3D体模进行仿真,该体模是通过复制标记有F18-FDG的鼠标的2D放射自显影截面生成的。同一切片的冷冻切片的数字照片用于生成解剖图像。使用基于互信息的刚性注册来注册图像。然后从基于放射自显影的体模中模拟PET数据。我们使用预处理的共轭梯度算法来计算使后部密度最大化的PET图像。将该方法的性能与使用高斯二次惩罚的方法进行了比较,后者不使用解剖信息。仿真结果表明,与二次惩罚相比,基于互信息的先验可以在可比较的偏差下降低标准偏差。

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