Affiliation:
1. Ministry of Industry and Information Technology of the People’s Republic of China
2. Shandong University
Abstract
Fluorescence molecular tomography can combine two-dimensional
fluorescence imaging with anatomical information to reconstruct
three-dimensional images of tumors. Reconstruction based on
traditional regularization with tumor sparsity priors does not take
into account that tumor cells form clusters, so it performs poorly
when multiple light sources are used. Here we describe reconstruction
based on an “adaptive group least angle regression elastic
net” (AGLEN) method, in which local spatial structure
correlation and group sparsity are integrated with elastic net
regularization, followed by least angle regression. The AGLEN method
works iteratively using the residual vector and a median smoothing
strategy in order to adaptively obtain a robust local optimum. The
method was verified using numerical simulations as well as imaging of
mice bearing liver or melanoma tumors. AGLEN reconstruction performed
better than state-of-the-art methods with different sizes of light
sources at different distances from the sample and in the presence of
Gaussian noise at 5–25%. In addition, AGLEN-based
reconstruction accurately imaged tumor expression of cell death
ligand-1, which can guide immunotherapy.
Funder
Key Research and Development Program of
Shandong
The Project of High-Level Talents Team
Introduction in Zhuhai City
National Public Welfare Basic Scientific
Research Program of Chinese Academy of Medical
Sciences
Beijing Municipal Natural Science
Foundation
National Natural Science Foundation of
China
Subject
Atomic and Molecular Physics, and Optics,Biotechnology
Cited by
3 articles.
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