Affiliation:
1. Dalian University of Technology
2. the Second Hospital of Dalian Medial University
Abstract
To alleviate the ill-posedness of bioluminescence tomography (BLT)
reconstruction, anatomical information from computed tomography (CT)
or magnetic resonance imaging (MRI) is usually adopted to improve the
reconstruction quality. With the anatomical information, different
organs could be segmented and assigned with appropriate optical
parameters, and the reconstruction could be confined into certain
organs. However, image segmentation is a time-consuming and
challenging work, especially for the low-contrast organs. In this
paper, we present a BLT reconstruction method in conjunction with an
organ probability map to effectively incorporate the anatomical
information. Instead of using a segmentation with a fixed organ map,
an organ probability map is established by registering the CT image of
the mouse to the statistical mouse atlas with the constraints of the
mouse surface and high-contrast organs (bone and lung). Then the organ
probability map of the low-contrast organs, such as the liver and
kidney, is determined automatically. After discretization of the mouse
torso, a heterogeneous model is established as the input for
reconstruction, in which the optical parameter of each node is
calculated according to the organ probability map. To take the
advantage of the sparse Bayesian Learning (SBL) method in recovering
block sparse signals in inverse problems, which is common in BLT
applications where the target distribution has the characteristic of
sparsity and block structure, a two-step method in conjunction with
the organ probability map is presented. In the first step, a fast
sparse algorithm, L1-LS, is used to reveal the source distribution on
the organ level. In the second step, the bioluminescent source is
reconstructed on the pixel level based on the SBL method. Both
simulation and in vivo experiments are conducted, and
the results demonstrate that the organ probability map in conjunction
with the proposed two-step BLT reconstruction method is feasible to
accurately reconstruct the localization of the bioluminescent light
source.
Funder
Natural Science Foundation of Liaoning
Province
National Natural Science Foundation of
China
Fundamental Research Funds for the
Central Universities
Dalian Engineering Research Center for
Artificial Intelligence in Medical Imaging
Subject
Atomic and Molecular Physics, and Optics,Biotechnology
Cited by
7 articles.
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