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Accelerating Vasculature Imaging in Tumor Using Mesoscopic Fluorescence Molecular Tomography Via a Hybrid Reconstruction Strategy

Overview
Publisher Elsevier
Specialty Biochemistry
Date 2021 May 24
PMID 34030042
Citations 3
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Abstract

Mesoscopic fluorescent molecular tomography (MFMT) enables to image fluorescent molecular probes beyond the typical depth limits of microscopic imaging and with enhanced resolution compared to macroscopic imaging. However, MFMT is a scattering-based inverse problem that is an ill-posed inverse problem and hence, requires relative complex iterative solvers coupled with regularization strategies. Inspired by the potential of deep learning in performing image formation tasks from raw measurements, this work proposes a hybrid approach to solve the MFMT inverse problem. This methodology combines a convolutional symmetric network and a conventional iterative algorithm to accelerate the reconstruction procedure. By the proposed deep neural network, the principal components of the sensitivity matrix are extracted and the accompanying noise in measurements is suppressed, which helps to accelerate the reconstruction and improve the accuracy of results. We apply the proposed method to reconstruct in silico and vascular tree models. The results demonstrate that reconstruction accuracy and speed are highly improved due to the reduction of redundant entries of the sensitivity matrix and noise suppression.

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References
1.
Lee H, Song B, Kim J, Jung J, Li H, Mutic S . Variable step size methods for solving simultaneous algebraic reconstruction technique (SART)-type cbct reconstructions. Oncotarget. 2017; 8(20):33827-33835. PMC: 5464914. DOI: 10.18632/oncotarget.17385. View

2.
Wu G, Nowotny T, Zhang Y, Yu H, Li D . Artificial neural network approaches for fluorescence lifetime imaging techniques. Opt Lett. 2016; 41(11):2561-4. DOI: 10.1364/OL.41.002561. View

3.
LeCun Y, Bengio Y, Hinton G . Deep learning. Nature. 2015; 521(7553):436-44. DOI: 10.1038/nature14539. View

4.
Yoo J, Sabir S, Heo D, Kim K, Wahab A, Choi Y . Deep Learning Diffuse Optical Tomography. IEEE Trans Med Imaging. 2019; 39(4):877-887. DOI: 10.1109/TMI.2019.2936522. View

5.
Zhao L, Lee V, Yoo S, Dai G, Intes X . The integration of 3-D cell printing and mesoscopic fluorescence molecular tomography of vascular constructs within thick hydrogel scaffolds. Biomaterials. 2012; 33(21):5325-32. PMC: 3356461. DOI: 10.1016/j.biomaterials.2012.04.004. View