DocumentCode
1368906
Title
Data Specific Spatially Varying Regularization for Multimodal Fluorescence Molecular Tomography
Author
Hyde, Damon ; Miller, Eric L. ; Brooks, Dana H. ; Ntziachristos, Vasilis
Author_Institution
Harvard Med. Sch., Comput. Radiol. Lab., Boston, MA, USA
Volume
29
Issue
2
fYear
2010
Firstpage
365
Lastpage
374
Abstract
Fluorescence molecular tomography (FMT) allows in vivo localization and quantification of fluorescence biodistributions in whole animals. The ill-posed nature of the tomographic reconstruction problem, however, limits the attainable resolution. Improvements in resolution and overall imaging performance can be achieved by forming image priors from geometric information obtained by a secondary anatomical or functional high-resolution imaging modality such as X-ray computed tomography or magnetic resonance imaging. A particular challenge in using image priors is to avoid the use of assumptions that may bias the solution and reduced the accuracy of the inverse problem. This is particularly relevant in FMT inversions where there is not an evident link between secondary geometric information and the underlying fluorescence biodistribution. We present here a new, two step approach to incorporating structural priors into the FMT inverse problem. By using the anatomic information to define a low dimensional inverse problem, we obtain a solution which we then use to determine the parameters defining a spatially varying regularization matrix for the full resolution problem. The regularization term is thus customized for each data set and is guided by the data rather than depending only on user defined a priori assumptions. Results are presented for both simulated and experimental data sets, and show significant improvements in image quality as compared to traditional regularization techniques.
Keywords
biomedical optical imaging; fluorescence; image reconstruction; inverse problems; medical image processing; optical tomography; FMT inverse problem; fluorescence biodistribution; fluorescence molecular tomography; ill posed tomographic reconstruction; image priors; image quality; low dimensional inverse problem; multimodal FMT; secondary geometric information; spatially varying regularisation; spatially varying regularization matrix; structural priors; Animals; Fluorescence; High-resolution imaging; Image reconstruction; In vivo; Inverse problems; Magnetic resonance imaging; Spatial resolution; Tomography; X-ray imaging; Fluorescence; multimodality; tomography; Algorithms; Alzheimer Disease; Amyloid; Animals; Brain; Computer Simulation; Fluorescence; Image Processing, Computer-Assisted; Mice; Mice, Transgenic; Models, Theoretical; Reproducibility of Results; Tomography; Tomography, X-Ray Computed;
fLanguage
English
Journal_Title
Medical Imaging, IEEE Transactions on
Publisher
ieee
ISSN
0278-0062
Type
jour
DOI
10.1109/TMI.2009.2031112
Filename
5238532
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