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A Fourier Approach to the Natural Pixel Discretization of Brain Single-Photon Emission Computed Tomography

机译:脑单光子发射计算机断层扫描的自然像素离散化的傅里叶方法

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We apply the natural pixel (NP) approach to the single-photon emission computed tomography (SPECT) problem. The NP approach allows us to split the tomographic problem into two sub-problems. The first is a linear inverse problem. The data are the measured projections and the linear operator is described by a Gram matrix, and provides a set of coefficients. The second consists of computing the solution of the tomographic problem as a linear combination of the elements of the NP basis with respect to the coefficients obtained by solving the first problem, and it provides a solution for any given grid of points. The spatially varying geometric response of the system is taken into account by properly choosing the elements of the basis. The rotational invariance shown by the elements of the considered basis induces a block circulant structure in the Gram matrix. This structure can be used to reduce the computational efforts needed for solving the inverse problem. In particular, we diagonalize (blockwise) the Gram matrix by applying the discrete Fourier transform and we solve the inverse problem in the frequency domain associated with the rotation angles. We develop numerical validation with synthetic data in order to test the performance of the NP approach and to assess the reliability of the results. A reconstruction of a two-dimensional image requires 45-94 s, which is an acceptable time for clinical purposes. Finally, we apply the method to acquired clinical data that consist of a three-dimensional brain scan.
机译:我们将自然像素(NP)方法应用于单光子发射计算机断层扫描(SPECT)问题。 NP方法使我们可以将层析成像问题分为两个子问题。第一个是线性逆问题。数据是测得的投影,线性算子由Gram矩阵描述,并提供一组系数。第二步包括将层析成像问题的解决方案计算为NP基础元素相对于通过求解第一个问题获得的系数的线性组合,并且为任何给定的点网格提供了解决方案。通过适当选择基础元素,可以考虑系统在空间上变化的几何响应。所考虑基础的元素所显示的旋转不变性会在Gram矩阵中引起块循环结构。此结构可用于减少解决反问题所需的计算量。特别是,我们通过应用离散傅立叶变换对角化(逐块)Gram矩阵,并解决了与旋转角相关的频域中的逆问题。我们使用合成数据进行数值验证,以测试NP方法的性能并评估结果的可靠性。重建二维图像需要45-94 s,这对于临床目的来说是可接受的时间。最后,我们将该方法应用于包含三维脑部扫描的临床数据。

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