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Open AccessJournal ArticleDOI

Anatomical image-guided fluorescence molecular tomography reconstruction using kernel method.

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TLDR
Numerical simulation results indicate that the proposed kernel method can separate two FMT targets with an edge-to-edge distance of 1 mm and is robust to false-positive guidance and inhomogeneity in the anatomical image.
Abstract
Fluorescence molecular tomography (FMT) is an important in vivo imaging modality to visualize physiological and pathological processes in small animals. However, FMT reconstruction is ill-posed and ill-conditioned due to strong optical scattering in deep tissues, which results in poor spatial resolution. It is well known that FMT image quality can be improved substantially by applying the structural guidance in the FMT reconstruction. An approach to introducing anatomical information into the FMT reconstruction is presented using the kernel method. In contrast to conventional methods that incorporate anatomical information with a Laplacian-type regularization matrix, the proposed method introduces the anatomical guidance into the projection model of FMT. The primary advantage of the proposed method is that it does not require segmentation of targets in the anatomical images. Numerical simulations and phantom experiments have been performed to demonstrate the proposed approach’s feasibility. Numerical simulation results indicate that the proposed kernel method can separate two FMT targets with an edge-to-edge distance of 1 mm and is robust to false-positive guidance and inhomogeneity in the anatomical image. For the phantom experiments with two FMT targets, the kernel method has reconstructed both targets successfully, which further validates the proposed kernel method.

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Citations
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Journal ArticleDOI

MR-Guided Kernel EM Reconstruction for Reduced Dose PET Imaging

TL;DR: The kernel method is shown to surpass maximum likelihood expectation maximization (MLEM) for the reconstruction of low-count datasets (corresponding to those obtained at reduced injected doses) producing visibly clearer reconstructions for unsmoothed and smoothed images, at all count levels.
Journal ArticleDOI

High Temporal-Resolution Dynamic PET Image Reconstruction Using a New Spatiotemporal Kernel Method

TL;DR: Computer simulations and an application to real patient scan have shown that the proposed approach can achieve effective noise reduction in both spatial and temporal domains and outperform the spatial kernel method and conventional ML reconstruction method for improving the high temporal-resolution dynamic PET imaging.
Journal ArticleDOI

K-Nearest Neighbor Based Locally Connected Network for Fast Morphological Reconstruction in Fluorescence Molecular Tomography

TL;DR: A novel K-nearest neighbor based locally connected (KNN-LC) network is proposed to improve the performance of morphological reconstruction in FMT and promoted the in vivo application of FMT for visualizing the distribution of biomarkers inside biological tissue.
Journal ArticleDOI

Adaptive Gaussian Weighted Laplace Prior Regularization Enables Accurate Morphological Reconstruction in Fluorescence Molecular Tomography

TL;DR: A novel adaptive Gaussian weighted Laplace prior (AGWLP) regularization method, which assumed the variance of fluorescence intensity between any two voxels had a non-linear correlation with their Gaussian distance, enabled FMT more suitable and practical for in vivo visualization of biomarkers.
Journal ArticleDOI

Spatially Compact MR-Guided Kernel EM for PET Image Reconstruction

TL;DR: A spatially compact parameterization of the MR-guided kernel method, should be the preferred implementation strategy in order to obviate unnecessary losses in PET-unique details.
References
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Kernel Principal Component Analysis

TL;DR: A new method for performing a nonlinear form of Principal Component Analysis by the use of integral operator kernel functions is proposed and experimental results on polynomial feature extraction for pattern recognition are presented.
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Kernel methods in machine learning

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TL;DR: Sobolev spaces as mentioned in this paper are weak-derivative or derivative in the sense of distributions, and they can be used to describe Fourier transform functions as well as generalized functions.
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Looking and listening to light: the evolution of whole-body photonic imaging.

TL;DR: Emphasis is shifting to photonic methods that use tomographic principles to noninvasively image optical contrast at depths of several millimeters to centimeters with high sensitivity and sub-millimeter to millimeter resolution.
Journal ArticleDOI

Fluorescence molecular tomography resolves protease activity in vivo

TL;DR: It is demonstrated that enzyme-activatable fluorochromes can be detected with high positional accuracy in deep tissues, that molecular specificities of different beacons towards enzymes can be resolved and that tomography of beacon activation is linearly related to enzyme concentration.
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