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PET Image Reconstruction Using Information Theoretic Anatomical Priors

机译:基于信息理论解剖先验的PET图像重建

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We describe a nonparametric framework for incorporating information from co-registered anatomical images into positron emission tomographic (PET) image reconstruction through priors based on information theoretic similarity measures. We compare and evaluate the use of mutual information (MI) and joint entropy (JE) between feature vectors extracted from the anatomical and PET images as priors in PET reconstruction. Scale-space theory provides a framework for the analysis of images at different levels of detail, and we use this approach to define feature vectors that emphasize prominent boundaries in the anatomical and functional images, and attach less importance to detail and noise that is less likely to be correlated in the two images. Through simulations that model the best case scenario of perfect agreement between the anatomical and functional images, and a more realistic situation with a real magnetic resonance image and a PET phantom that has partial volumes and a smooth variation of intensities, we evaluate the performance of MI and JE based priors in comparison to a Gaussian quadratic prior, which does not use any anatomical information. We also apply this method to clinical brain scan data using $F^{18}$ Fallypride, a tracer that binds to dopamine receptors and therefore localizes mainly in the striatum. We present an efficient method of computing these priors and their derivatives based on fast Fourier transforms that reduce the complexity of their convolution-like expressions. Our results indicate that while sensitive to initialization and choice of hyperparameters, information theoretic priors can reconstruct images with higher contrast and superior quantitation than quadratic priors.
机译:我们描述了一个非参数框架,用于通过信息理论相似性度量通过先验将来自共同注册的解剖图像的信息合并到正电子发射断层扫描(PET)图像重建中。我们比较和评估从解剖和PET图像提取的特征向量之间的互信息(MI)和联合熵(JE)的使用,作为PET重建的先验条件。尺度空间理论为分析不同细节水平的图像提供了一个框架,我们使用这种方法来定义特征向量,这些特征向量强调了解剖和功能图像中的突出边界,并且对细节和噪声的重视程度降低了在两个图像中相关。通过对解剖图像和功能图像之间完全吻合的最佳情况进行建模的模拟,以及具有真实磁共振图像和具有部分体积和强度平滑变化的PET体模的更现实情况的仿真,我们评估了MI的性能与不使用任何解剖信息的高斯二次先验相比,基于JE的先验。我们还将这种方法应用于F $ {18} $ Fallypride的临床脑扫描数据,Fallypride是一种与多巴胺受体结合的示踪剂,因此主要位于纹状体中。我们提出了一种基于快速傅立叶变换的计算这些先验及其导数的有效方法,可降低其卷积式表达式的复杂性。我们的结果表明,尽管对超参数的初始化和选择很敏感,但信息理论先验可以比二次先验重建具有更高对比度和更好定量的图像。

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