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Analysis of tissue microstructure with Mueller microscopy: logarithmic decomposition and Monte Carlo modeling

Significance: Definitive diagnostics of many diseases is based on the histological analysis of thin tissue cuts with optical white light microscopy. Extra information on tissue structural properties obtained with polarized light would help the pathologist to improve the accuracy of his diagnosis. Ai...

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Autores principales: Li, Pengcheng, Lee, Hee Ryung, Chandel, Shubham, Lotz, Christian, Groeber-Becker, Florian Kai, Dembski, Sofia, Ossikovski, Razvigor, Ma, Hui, Novikova, Tatiana
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Society of Photo-Optical Instrumentation Engineers 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7008502/
https://www.ncbi.nlm.nih.gov/pubmed/31933331
http://dx.doi.org/10.1117/1.JBO.25.1.015002
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author Li, Pengcheng
Lee, Hee Ryung
Chandel, Shubham
Lotz, Christian
Groeber-Becker, Florian Kai
Dembski, Sofia
Ossikovski, Razvigor
Ma, Hui
Novikova, Tatiana
author_facet Li, Pengcheng
Lee, Hee Ryung
Chandel, Shubham
Lotz, Christian
Groeber-Becker, Florian Kai
Dembski, Sofia
Ossikovski, Razvigor
Ma, Hui
Novikova, Tatiana
author_sort Li, Pengcheng
collection PubMed
description Significance: Definitive diagnostics of many diseases is based on the histological analysis of thin tissue cuts with optical white light microscopy. Extra information on tissue structural properties obtained with polarized light would help the pathologist to improve the accuracy of his diagnosis. Aim: We report on using Mueller matrix microscopy data, logarithmic decomposition, and polarized Monte Carlo (MC) modeling for qualitative and quantitative analysis of thin tissue cuts to extract the information on tissue microstructure that is not available with a conventional white light microscopy. Approach: Unstained cuts of human skin equivalents were measured with a custom-built liquid-crystal-based Mueller microscope in transmission configuration. To interpret experimental data, we performed the simulations with a polarized MC algorithm for scattering anisotropic media. Several optical models of tissue (spherical scatterers within birefringent host medium, and combination of spherical and cylindrical scatterers within either isotropic or birefringent host medium) were tested. Results: A set of rotation invariants for the logarithmic decomposition of a Mueller matrix was derived to rule out the impact of sample orientation. These invariants were calculated for both simulated and measured Mueller matrices of the dermal layer of skin equivalents. We demonstrated that only the simulations with a model combining both spherical and cylindrical scatterers within birefringent host medium reproduced the experimental trends in optical properties of the dermal layer (linear retardance, linear dichroism, and anisotropic linear depolarization) with layer thickness. Conclusions: Our studies prove that Mueller polarimetry provides relevant information not only on a size of dominant scatterers (e.g., cell nuclei versus subwavelength organelles) but also on its shape (e.g., cells versus collagen fibers). The latter is directly related to the state of extracellular collagen matrix, which is often affected by early pathology. Hence, using polarimetric data can help to increase the accuracy of diagnosis.
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spelling pubmed-70085022020-02-14 Analysis of tissue microstructure with Mueller microscopy: logarithmic decomposition and Monte Carlo modeling Li, Pengcheng Lee, Hee Ryung Chandel, Shubham Lotz, Christian Groeber-Becker, Florian Kai Dembski, Sofia Ossikovski, Razvigor Ma, Hui Novikova, Tatiana J Biomed Opt General Significance: Definitive diagnostics of many diseases is based on the histological analysis of thin tissue cuts with optical white light microscopy. Extra information on tissue structural properties obtained with polarized light would help the pathologist to improve the accuracy of his diagnosis. Aim: We report on using Mueller matrix microscopy data, logarithmic decomposition, and polarized Monte Carlo (MC) modeling for qualitative and quantitative analysis of thin tissue cuts to extract the information on tissue microstructure that is not available with a conventional white light microscopy. Approach: Unstained cuts of human skin equivalents were measured with a custom-built liquid-crystal-based Mueller microscope in transmission configuration. To interpret experimental data, we performed the simulations with a polarized MC algorithm for scattering anisotropic media. Several optical models of tissue (spherical scatterers within birefringent host medium, and combination of spherical and cylindrical scatterers within either isotropic or birefringent host medium) were tested. Results: A set of rotation invariants for the logarithmic decomposition of a Mueller matrix was derived to rule out the impact of sample orientation. These invariants were calculated for both simulated and measured Mueller matrices of the dermal layer of skin equivalents. We demonstrated that only the simulations with a model combining both spherical and cylindrical scatterers within birefringent host medium reproduced the experimental trends in optical properties of the dermal layer (linear retardance, linear dichroism, and anisotropic linear depolarization) with layer thickness. Conclusions: Our studies prove that Mueller polarimetry provides relevant information not only on a size of dominant scatterers (e.g., cell nuclei versus subwavelength organelles) but also on its shape (e.g., cells versus collagen fibers). The latter is directly related to the state of extracellular collagen matrix, which is often affected by early pathology. Hence, using polarimetric data can help to increase the accuracy of diagnosis. Society of Photo-Optical Instrumentation Engineers 2020-01-13 2020-01 /pmc/articles/PMC7008502/ /pubmed/31933331 http://dx.doi.org/10.1117/1.JBO.25.1.015002 Text en © 2020 The Authors https://creativecommons.org/licenses/by/4.0/ Published by SPIE under a Creative Commons Attribution 4.0 Unported License. Distribution or reproduction of this work in whole or in part requires full attribution of the original publication, including its DOI.
spellingShingle General
Li, Pengcheng
Lee, Hee Ryung
Chandel, Shubham
Lotz, Christian
Groeber-Becker, Florian Kai
Dembski, Sofia
Ossikovski, Razvigor
Ma, Hui
Novikova, Tatiana
Analysis of tissue microstructure with Mueller microscopy: logarithmic decomposition and Monte Carlo modeling
title Analysis of tissue microstructure with Mueller microscopy: logarithmic decomposition and Monte Carlo modeling
title_full Analysis of tissue microstructure with Mueller microscopy: logarithmic decomposition and Monte Carlo modeling
title_fullStr Analysis of tissue microstructure with Mueller microscopy: logarithmic decomposition and Monte Carlo modeling
title_full_unstemmed Analysis of tissue microstructure with Mueller microscopy: logarithmic decomposition and Monte Carlo modeling
title_short Analysis of tissue microstructure with Mueller microscopy: logarithmic decomposition and Monte Carlo modeling
title_sort analysis of tissue microstructure with mueller microscopy: logarithmic decomposition and monte carlo modeling
topic General
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7008502/
https://www.ncbi.nlm.nih.gov/pubmed/31933331
http://dx.doi.org/10.1117/1.JBO.25.1.015002
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