Abstract

Constrained least-squares filtering is a technique which employs a priori tomograph response information for the filtering of projection data prior to the filtered backprojection of radionuclide distribution images. A simulation study in which the performance of this algorithm was evaluated as a function of the sampling density within each projection of the radon transform is described. The results of this evaluation demonstrate that the efficient application of this algorithm requires higher sampling densities than are typically employed in high-resolution PET (positron emission tomography) and SPECT (single-photon-emission computed tomography). Therefore, application of this algorithm requires software and/or hardware modification of the data acquisition schemes employed in tomographic systems. >

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