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The attenuated spline reconstruction technique for single photon emission computed tomography. | LitMetric

AI Article Synopsis

  • The aSRT is a new algorithm for improving image reconstruction in single photon emission computed tomography (SPECT) by using advanced mathematical techniques and attenuation data from CT scans.
  • The method involves complex calculations including Hilbert transforms and cubic spline interpolation to enhance image quality and better handle issues like noise.
  • Results indicate that aSRT outperforms traditional reconstruction methods (FBP and OSEM) in producing clearer images, especially in detecting 'cold' areas in myocardial studies, making it a compelling option for better clinical diagnostics.

Article Abstract

We present the (aSRT) which provides an innovative algorithm for single photon emission computed tomography (SPECT) image reconstruction. aSRT is based on an analytic formula of the inverse attenuated Radon transform. It involves the computation of the Hilbert transforms of the linear attenuation function and of two sinusoidal functions of the so-called These computations are achieved by employing the attenuation information provided by computed tomography (CT) scans and by utilizing custom-made cubic spline interpolation. The purpose of this work is: (i) to present the mathematics of aSRT, (ii) to reconstruct simulated and real SPECT/CT data using aSRT and (iii) to evaluate aSRT by comparing it to filtered backprojection (FBP) and to ordered subsets expectation minimization (OSEM) reconstruction algorithms. Simulation studies were performed by using an image quality phantom and an appropriate attenuation map. Reconstructed images were generated for 45, 90 and 180 views over 360 degrees with 20 realizations and involved Poisson noise of three different levels (NL), namely 100% (NL1), 50% (NL2) and 10% (NL3) of the total counts, respectively. Moreover, real attenuated SPECT sinograms were reconstructed from a real study of a Jaszczak phantom, as well as from a real clinical myocardial SPECT/CT study. Comparisons between aSRT, FBP and OSEM reconstructions were performed using contrast, bias and image roughness. The results suggest that aSRT can efficiently produce accurate attenuation-corrected reconstructions for simulated and real phantoms, as well as for clinical data. In particular, in the case of the clinical myocardial study, aSRT produced reconstructions with higher cold contrast than both FBP and OSEM. aSRT, by incorporating the attenuation correction within itself, may provide an improved alternative to FBP. This is particularly promising for 'cold' regions as those occurring in myocardial ischaemia.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6283982PMC
http://dx.doi.org/10.1098/rsif.2018.0509DOI Listing

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