The convergence of object dependent resolution in maximum likelihood based tomographic image reconstruction
- 1 January 1993
- journal article
- Published by IOP Publishing in Physics in Medicine & Biology
- Vol. 38 (1) , 55-70
- https://doi.org/10.1088/0031-9155/38/1/005
Abstract
Study of the maximum likelihood by EM algorithm (ML) with a reconstruction kernel equal to the intrinsic detector resolution and sieve regularization has demonstrated that any image improvements over filtered backprojection (FBP) are a function of image resolution. Comparing different reconstruction algorithms potentially requires measuring and matching the image resolution. Since there are no standard methods for describing the resolution of images from a nonlinear algorithm such as ML, we have defined measures of effective local Gaussian resolution (ELGR) and effective global Gaussian resolution (EGGR) and examined their behaviour in FBP images and in ML images using two different measurement techniques. For FBP these two resolution measures are equal and exhibit the standard convolution behaviour of linear systems. For ML, the FWHM of the ELGR monotonically increased with decreasing Gaussian object size due to slower convergence rates for smaller objects. For the simple simulated phantom used, this resolution dependence is independent of object position. With increasing object size, number of iterations and sieve size the object size dependence of the ELGR decreased. The FWHM of the EGGR converged after approximately 200 iterations, masking the fact that the ELGR for small objects was far from convergence. When FBP is compared to a nonlinear algorithm such as ML, it is recommended that at least the EGGR be matched; for ML this requires more than the number of iterations (e.g., < 100) that are typically run to minimize the mean square error or to satisfy a feasibility or similar stopping criterion. For many tasks, matching the EGGR of ML to FBP images may be insufficient and >> 200 iterations may be needed, particularly for small objects in the ML image because their ELGR has not yet converged.Keywords
This publication has 15 references indexed in Scilit:
- Algebraic Reconstruction Techniques (ART) for three-dimensional electron microscopy and X-ray photographyPublished by Elsevier ,2004
- Practical tradeoffs between noise, quantitation, and number of iterations for maximum likelihood-based reconstructionsIEEE Transactions on Medical Imaging, 1991
- Performance evaluation of an iterative image reconstruction algorithm for positron emission tomographyIEEE Transactions on Medical Imaging, 1991
- Numerical study of multigrid implementations of some iterative image reconstruction algorithmsIEEE Transactions on Medical Imaging, 1991
- Image improvements in positron-emission tomography due to measuring differential time-of-flight and using maximum-likelihood estimationIEEE Transactions on Nuclear Science, 1990
- Iterative image reconstruction for positron emission tomography: a study of convergence and quantitation problemsIEEE Transactions on Nuclear Science, 1990
- Noise and Edge Artifacts in Maximum-Likelihood Reconstructions for Emission TomographyIEEE Transactions on Medical Imaging, 1987
- A Maximum Likelihood Method for Region-of-Interest Evaluation in Emission TomographyJournal of Computer Assisted Tomography, 1986
- The Use of Sieves to Stabilize Images Produced with the EM Algorithm for Emission TomographyIEEE Transactions on Nuclear Science, 1985
- Analysis of Emission Tomographic Scan Data: Limitations Imposed by Resolution and BackgroundJournal of Computer Assisted Tomography, 1984