Literature DB >> 31203169

Tensor decomposition of hyperspectral images to study autofluorescence in age-related macular degeneration.

Neel Dey1, Sungmin Hong2, Thomas Ach3, Yiannis Koutalos4, Christine A Curcio5, R Theodore Smith6, Guido Gerig2.   

Abstract

Autofluorescence is the emission of light by naturally occurring tissue components on the absorption of incident light. Autofluorescence within the eye is associated with several disorders, such as Age-related Macular Degeneration (AMD) which is a leading cause of central vision loss. Its pathogenesis is incompletely understood, but endogenous fluorophores in retinal tissue might play a role. Hyperspectral fluorescence microscopy of ex-vivo retinal tissue can be used to determine the fluorescence emission spectra of these fluorophores. Comparisons of spectra in healthy and diseased tissues can provide important insights into the pathogenesis of AMD. However, the spectrum from each pixel of the hyperspectral image is a superposition of spectra from multiple overlapping tissue components. As spectra cannot be negative, there is a need for a non-negative blind source separation model to isolate individual spectra. We propose a tensor formulation by leveraging multiple excitation wavelengths to excite the tissue sample. Arranging images from different excitation wavelengths as a tensor, a non-negative tensor decomposition can be performed to recover a provably unique low-rank model with factors representing emission and excitation spectra of these materials and corresponding abundance maps of autofluorescent substances in the tissue sample. We iteratively impute missing values common in fluorescence measurements using Expectation-Maximization and use L2 regularization to reduce ill-posedness. Further, we present a framework for performing group hypothesis testing on hyperspectral images, finding significant differences in spectra between AMD and control groups in the peripheral macula. In the absence of ground truth, i.e. molecular identification of fluorophores, we provide a rigorous validation of chosen methods on both synthetic and real images where fluorescence spectra are known. These methodologies can be applied to the study of other pathologies presenting autofluorescence that can be captured by hyperspectral imaging.
Copyright © 2019 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Age-related macular degeneration; Functional data analysis; Hyperspectral fluorescence microscopy imaging; Non-negative tensor decompositions; Unsupervised machine learning

Year:  2019        PMID: 31203169      PMCID: PMC6884332          DOI: 10.1016/j.media.2019.05.009

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  29 in total

1.  Learning the parts of objects by non-negative matrix factorization.

Authors:  D D Lee; H S Seung
Journal:  Nature       Date:  1999-10-21       Impact factor: 49.962

2.  In vivo fluorescence spectra unmixing and autofluorescence removal by sparse nonnegative matrix factorization.

Authors:  Anne-Sophie Montcuquet; Lionel Hervé; Fabrice Navarro; Jean-Marc Dinten; Jérôme I Mars
Journal:  IEEE Trans Biomed Eng       Date:  2011-06-13       Impact factor: 4.538

Review 3.  Optical hyperspectral imaging in microscopy and spectroscopy - a review of data acquisition.

Authors:  Liang Gao; R Theodore Smith
Journal:  J Biophotonics       Date:  2014-09-03       Impact factor: 3.207

4.  Accuracy and precision in quantitative fluorescence microscopy.

Authors:  Jennifer C Waters
Journal:  J Cell Biol       Date:  2009-06-29       Impact factor: 10.539

5.  Purification and partial characterization of a lutein-binding protein from human retina.

Authors:  Prakash Bhosale; Binxing Li; Mohsen Sharifzadeh; Werner Gellermann; Jeanne M Frederick; Kozo Tsuchida; Paul S Bernstein
Journal:  Biochemistry       Date:  2009-06-09       Impact factor: 3.162

6.  Quantitative autofluorescence and cell density maps of the human retinal pigment epithelium.

Authors:  Thomas Ach; Carrie Huisingh; Gerald McGwin; Jeffrey D Messinger; Tianjiao Zhang; Mark J Bentley; Danielle B Gutierrez; Zsolt Ablonczy; R Theodore Smith; Kenneth R Sloan; Christine A Curcio
Journal:  Invest Ophthalmol Vis Sci       Date:  2014-07-17       Impact factor: 4.799

7.  Shrinkage estimation for functional principal component scores with application to the population kinetics of plasma folate.

Authors:  Fang Yao; Hans-Georg Müller; Andrew J Clifford; Steven R Dueker; Jennifer Follett; Yumei Lin; Bruce A Buchholz; John S Vogel
Journal:  Biometrics       Date:  2003-09       Impact factor: 2.571

Review 8.  Causes of vision loss worldwide, 1990-2010: a systematic analysis.

Authors:  Rupert R A Bourne; Gretchen A Stevens; Richard A White; Jennifer L Smith; Seth R Flaxman; Holly Price; Jost B Jonas; Jill Keeffe; Janet Leasher; Kovin Naidoo; Konrad Pesudovs; Serge Resnikoff; Hugh R Taylor
Journal:  Lancet Glob Health       Date:  2013-11-11       Impact factor: 26.763

9.  A Two Sample Distribution-Free Test for Functional Data with Application to a Diffusion Tensor Imaging Study of Multiple Sclerosis.

Authors:  Gina-Maria Pomann; Ana-Maria Staicu; Sujit Ghosh
Journal:  J R Stat Soc Ser C Appl Stat       Date:  2016-01-09       Impact factor: 1.864

10.  Spatial and Spectral Characterization of Human Retinal Pigment Epithelium Fluorophore Families by Ex Vivo Hyperspectral Autofluorescence Imaging.

Authors:  Tal Ben Ami; Yuehong Tong; Alauddin Bhuiyan; Carrie Huisingh; Zsolt Ablonczy; Thomas Ach; Christine A Curcio; R Theodore Smith
Journal:  Transl Vis Sci Technol       Date:  2016-05-17       Impact factor: 3.283

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  1 in total

1.  Hyperspectral Imaging and the Retina: Worth the Wave?

Authors:  Sophie Lemmens; Jan Van Eijgen; Karel Van Keer; Julie Jacob; Sinéad Moylett; Lies De Groef; Toon Vancraenendonck; Patrick De Boever; Ingeborg Stalmans
Journal:  Transl Vis Sci Technol       Date:  2020-08-05       Impact factor: 3.283

  1 in total

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