Title :
Statistically regulated and adaptive EM reconstruction for emission computed tomography
Author_Institution :
Dept. of Radiol., Utah Univ., Salt Lake City, UT, USA
fDate :
6/1/2001 12:00:00 AM
Abstract :
Iterative algorithms such as MLEM are rapidly becoming the standard for reconstruction in emission computed tomography. However, such algorithms require arbitrary stopping criteria, are sensitive to noise artifacts, and require accelerated implementations that may not work well for all imaging situations. We have investigated several new iterative algorithms with likelihood-based objective functions that use the concepts of statistically adaptive subsetting and spatially adaptive updates. The resulting statistically regulated expectation maximization (StatREM) algorithms are closely related to OSEM with the following exceptions: they apply spatially adaptive regularization and use statistically adaptive subsets to accelerate convergence in a controlled manner. Projection data are processed sequentially and internal statistically adaptive subsets are formed. When accumulated statistical power merits an update, e.g., determined by paired sample t-test, then spatially adaptive updates are applied and the corresponding test statistics and subset accumulations are reset. Reconstruction continues iteratively until no further statistically significant errors remain. The following properties were observed for clinical, phantom and simulated data: (1) user-defined test levels can provide statistically based stopping criteria; (2) recovery of spatial resolution is accelerated in high-count regions while low-count regions are regulated to reduce noise artifacts; (3) notable acceleration is achieved for large, sparse datasets [such as fully 3-D positron emission tomography (PET)]; and (4) resolution and contrast are superior to conventional OSEM at much lower noise levels. Statistically regulated expectation maximization algorithms may potentially provide a new archetype for PET and SPECT reconstruction
Keywords :
adaptive signal processing; image reconstruction; iterative methods; maximum likelihood estimation; medical image processing; positron emission tomography; single photon emission computed tomography; statistical analysis; SPECT reconstruction; accelerated implementations; accumulated statistical power; adaptive EM reconstruction; clinical data; contrast; convergence; emission computed tomography; fully 3-D positron emission tomography; high-count regions; iterative algorithms; likelihood-based objective functions; low-count regions; noise artifacts; paired sample t-test; phantom data; projection data; simulated data; spatial resolution; spatially adaptive regularization; spatially adaptive updates; statistically adaptive subsets; statistically adaptive subsetting; statistically based stopping criteria; statistically regulated expectation maximization algorithms; statistically regulated reconstruction; stopping criteria; subset accumulations; test statistics; user-defined test levels; Acceleration; Adaptive control; Image reconstruction; Iterative algorithms; Life estimation; Noise level; Positron emission tomography; Programmable control; Spatial resolution; Testing;
Journal_Title :
Nuclear Science, IEEE Transactions on