Object dependency of resolution and convergence rate in OSEM with filtering

It is well known that the convergence properties of the maximum likelihood expectation maximisation (MLEM) algorithm depend on the activity distribution in the field of view. We study resolution properties for MLEM/ordered subsets EM (OSEM) with different types of regularisation. It will be shown that although different parts of the image converge at different rates, pure and post filtered MLEM/OSEM achieve reasonably uniform resolution. By contrast, inter-iteration filtering (IF OSEM) with smoothing filters, such as a Gaussian, produces images with varying spatial resolution that is dependent on the surrounding activity. We conclude that the resolution non-uniformity is entirely due to the filtering. We propose a spatially varying filter to overcome this problem and to obtain images with nearly uniform resolution. Experimental evidence of the performance of these filters on noiseless data is also shown.

[1]  Claire Labbé,et al.  An object-oriented library incorporating efficient projection/backprojection operators for volume reconstruction in 3D PET , 1999 .

[2]  Richard M. Leahy,et al.  Resolution and noise properties of MAP reconstruction for fully 3-D PET , 2000, IEEE Transactions on Medical Imaging.

[3]  Habib Zaidi,et al.  An Object-Oriented Library for 3D PET Reconstruction Using Parallel Computing , 1999, Bildverarbeitung für die Medizin.

[4]  A. P. Jeavons,et al.  A 3D HIDAC-PET camera with sub-millimetre resolution for imaging small animals , 1998 .

[5]  Jeffrey A. Fessler,et al.  Spatial resolution properties of penalized-likelihood image reconstruction: space-invariant tomographs , 1996, IEEE Trans. Image Process..

[6]  Sakari Alenius On noise reduction in iterative image reconstruction algorithms for emission tomography: median root prior , 1999 .

[7]  Jeffrey A. Fessler,et al.  Regularization for uniform spatial resolution properties in penalized-likelihood image reconstruction , 2000, IEEE Transactions on Medical Imaging.

[8]  K Thielemans,et al.  Enhanced 3D PET OSEM reconstruction using inter-update Metz filtering. , 2000, Physics in medicine and biology.

[9]  P. Green Bayesian reconstructions from emission tomography data using a modified EM algorithm. , 1990, IEEE transactions on medical imaging.

[10]  L. Shepp,et al.  A Statistical Model for Positron Emission Tomography , 1985 .

[11]  E. Veklerov,et al.  Stopping Rule for the MLE Algorithm Based on Statistical Hypothesis Testing , 1987, IEEE Transactions on Medical Imaging.

[12]  W. Niessen,et al.  Selection of task-dependent diffusion filters for the post-processing of SPECT images. , 1998, Physics in medicine and biology.

[13]  J. D. Wilson,et al.  A smoothed EM approach to indirect estimation problems, with particular reference to stereology and emission tomography , 1990 .