Literature DB >> 9651035

Selection of task-dependent diffusion filters for the post-processing of SPECT images.

F J Beekman1, E T Slijpen, W J Niessen.   

Abstract

Iterative reconstruction from single photon emission computed tomography (SPECT) data requires regularization to avoid noise amplification and edge artefacts in the reconstructed image. This is often accomplished by stopping the iteration process at a relatively low number of iterations or by post-filtering the reconstructed image. The aim of this paper is to develop a method to automatically select an optimal combination of stopping iteration number and filters for a particular imaging situation. To this end different error measures between the distribution of a phantom and a corresponding filtered SPECT image are minimized for different iteration numbers. As a study example, simulated data representing a brain study are used. For post-reconstruction filtering, the performance of 3D linear diffusion (Gaussian filtering) and edge preserving 3D nonlinear diffusion (Catté scheme) is investigated. For reconstruction methods which model the image formation process accurately, error measures between the phantom and the filtered reconstruction are significantly reduced by performing a high number of iterations followed by optimal filtering compared with stopping the iterative process early. Furthermore, this error reduction can be obtained over a wide range of iteration numbers. Only a negligibly small additional reduction of the errors is obtained by including spatial variance in the filter kernel. Compared with Gaussian filtering, Catté diffusion can further reduce the error in some cases. For the examples considered, using accurate image formation models during iterative reconstruction is far more important than the choice of the filter.

Mesh:

Year:  1998        PMID: 9651035     DOI: 10.1088/0031-9155/43/6/024

Source DB:  PubMed          Journal:  Phys Med Biol        ISSN: 0031-9155            Impact factor:   3.609


  6 in total

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4.  Small field-of-view dedicated cardiac SPECT systems: impact of projection truncation.

Authors:  Jianbin Xiao; Fred J Verzijlbergen; Max A Viergever; Freek J Beekman
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5.  Optimisation of quantitative lung SPECT applied to mild COPD: a software phantom simulation study.

Authors:  Pernilla Norberg; Anna Olsson; Gudrun Alm Carlsson; Michael Sandborg; Agnetha Gustafsson
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6.  Experimental investigation of angular stackgram filtering for noise reduction of SPECT projection data: study with linear and nonlinear filters.

Authors:  Antti P Happonen; Matti O Koskinen
Journal:  Int J Biomed Imaging       Date:  2007
  6 in total

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