Title :
ML reconstruction from dynamic list-mode PET data using temporal splines
Author :
Verhaeghe, J. ; D´Asseler, Y. ; Vandenberghe, S. ; Staelens, S. ; Van de Walle, R. ; Lemahieu, I.
Author_Institution :
ELIS Dept., Ghent Univ., Belgium
Abstract :
We implemented and evaluated a maximum likelihood-optimality condition iteration algorithm (ML-OCI) to reconstruct dynamic PET data. The time activity curves (TACs) were reconstructed on a spatially segmented image. The segmented image paradigm effectively cancels out spatial reconstruction issues allowing a time domain evaluation of our method. The TACs were represented on a B-spline basis. We investigated different parameters of this basis such as order, number of basis functions and knot placing in a reconstruction task, using simulated dynamic list-mode data. We found that a higher density of basis functions allows the algorithm to follow faster changes in the TAC, however the TACs become noisier. Therefore an adaptive knot placing strategy is developed and evaluated. It allowed a more accurate reconstruction while preserving the same noise-level.
Keywords :
image reconstruction; image segmentation; maximum likelihood estimation; positron emission tomography; spatiotemporal phenomena; B-spline basis; ML reconstruction; ML-OCI; basis functions; dynamic list-mode PET data; knot placing; maximum likelihood optimality condition iteration algorithm; noise-level; spatial reconstruction; spatially segmented image paradigm; temporal regularization; temporal splines; time activity curves; time domain evaluation; Convolution; Image reconstruction; Image resolution; Image segmentation; Linearity; Maximum likelihood detection; Maximum likelihood estimation; Positron emission tomography; Spatial resolution; Spline;
Conference_Titel :
Nuclear Science Symposium Conference Record, 2004 IEEE
Print_ISBN :
0-7803-8700-7
Electronic_ISBN :
1082-3654
DOI :
10.1109/NSSMIC.2004.1466348