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Minimally Invasive Live Tissue High-fidelity Thermophysical Modeling using Real-time Thermography

We present a novel thermodynamic parameter estimation framework for energy-based surgery on live tissue, with direct applications to tissue characterization during electrosurgery. This framework addresses the problem of estimating tissue-specific thermodynamics in real-time, which would enable accur...

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Autores principales: El-Kebir, Hamza, Ran, Junren, Lee, Yongseok, Chamorro, Leonardo P., Ostoja-Starzewski, Martin, Berlin, Richard, Aguiluz Cornejo, Gabriela M., Benedetti, Enrico, Giulianotti, Pier C., Bentsman, Joseph
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cornell University 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9900965/
https://www.ncbi.nlm.nih.gov/pubmed/36748004
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author El-Kebir, Hamza
Ran, Junren
Lee, Yongseok
Chamorro, Leonardo P.
Ostoja-Starzewski, Martin
Berlin, Richard
Aguiluz Cornejo, Gabriela M.
Benedetti, Enrico
Giulianotti, Pier C.
Bentsman, Joseph
author_facet El-Kebir, Hamza
Ran, Junren
Lee, Yongseok
Chamorro, Leonardo P.
Ostoja-Starzewski, Martin
Berlin, Richard
Aguiluz Cornejo, Gabriela M.
Benedetti, Enrico
Giulianotti, Pier C.
Bentsman, Joseph
author_sort El-Kebir, Hamza
collection PubMed
description We present a novel thermodynamic parameter estimation framework for energy-based surgery on live tissue, with direct applications to tissue characterization during electrosurgery. This framework addresses the problem of estimating tissue-specific thermodynamics in real-time, which would enable accurate prediction of thermal damage impact to the tissue and damage-conscious planning of electrosurgical procedures. Our approach provides basic thermodynamic information such as thermal diffusivity, and also allows for obtaining the thermal relaxation time and a model of the heat source, yielding in real-time a controlled hyperbolic thermodynamics model. The latter accounts for the finite thermal propagation time necessary for modeling of the electrosurgical action, in which the probe motion speed often surpasses the speed of thermal propagation in the tissue operated on. Our approach relies solely on thermographer feedback and a knowledge of the power level and position of the electrosurgical pencil, imposing only very minor adjustments to normal electrosurgery to obtain a high-fidelity model of the tissue-probe interaction. Our method is minimally invasive and can be performed in situ. We apply our method first to simulated data based on porcine muscle tissue to verify its accuracy and then to in vivo liver tissue, and compare the results with those from the literature. This comparison shows that parameterizing the Maxwell–Cattaneo model through the framework proposed yields a noticeably higher fidelity real-time adaptable representation of the thermodynamic tissue response to the electrosurgical impact than currently available. A discussion on the differences between the live and the dead tissue thermodynamics is also provided.
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spelling pubmed-99009652023-02-07 Minimally Invasive Live Tissue High-fidelity Thermophysical Modeling using Real-time Thermography El-Kebir, Hamza Ran, Junren Lee, Yongseok Chamorro, Leonardo P. Ostoja-Starzewski, Martin Berlin, Richard Aguiluz Cornejo, Gabriela M. Benedetti, Enrico Giulianotti, Pier C. Bentsman, Joseph ArXiv Article We present a novel thermodynamic parameter estimation framework for energy-based surgery on live tissue, with direct applications to tissue characterization during electrosurgery. This framework addresses the problem of estimating tissue-specific thermodynamics in real-time, which would enable accurate prediction of thermal damage impact to the tissue and damage-conscious planning of electrosurgical procedures. Our approach provides basic thermodynamic information such as thermal diffusivity, and also allows for obtaining the thermal relaxation time and a model of the heat source, yielding in real-time a controlled hyperbolic thermodynamics model. The latter accounts for the finite thermal propagation time necessary for modeling of the electrosurgical action, in which the probe motion speed often surpasses the speed of thermal propagation in the tissue operated on. Our approach relies solely on thermographer feedback and a knowledge of the power level and position of the electrosurgical pencil, imposing only very minor adjustments to normal electrosurgery to obtain a high-fidelity model of the tissue-probe interaction. Our method is minimally invasive and can be performed in situ. We apply our method first to simulated data based on porcine muscle tissue to verify its accuracy and then to in vivo liver tissue, and compare the results with those from the literature. This comparison shows that parameterizing the Maxwell–Cattaneo model through the framework proposed yields a noticeably higher fidelity real-time adaptable representation of the thermodynamic tissue response to the electrosurgical impact than currently available. A discussion on the differences between the live and the dead tissue thermodynamics is also provided. Cornell University 2023-01-23 /pmc/articles/PMC9900965/ /pubmed/36748004 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format, so long as attribution is given to the creator. The license allows for commercial use. Personal use of this material is permitted. However, permission to use this material for any other purposes must be obtained from the IEEE by sending an email to pubs-permissions@ieee.org.
spellingShingle Article
El-Kebir, Hamza
Ran, Junren
Lee, Yongseok
Chamorro, Leonardo P.
Ostoja-Starzewski, Martin
Berlin, Richard
Aguiluz Cornejo, Gabriela M.
Benedetti, Enrico
Giulianotti, Pier C.
Bentsman, Joseph
Minimally Invasive Live Tissue High-fidelity Thermophysical Modeling using Real-time Thermography
title Minimally Invasive Live Tissue High-fidelity Thermophysical Modeling using Real-time Thermography
title_full Minimally Invasive Live Tissue High-fidelity Thermophysical Modeling using Real-time Thermography
title_fullStr Minimally Invasive Live Tissue High-fidelity Thermophysical Modeling using Real-time Thermography
title_full_unstemmed Minimally Invasive Live Tissue High-fidelity Thermophysical Modeling using Real-time Thermography
title_short Minimally Invasive Live Tissue High-fidelity Thermophysical Modeling using Real-time Thermography
title_sort minimally invasive live tissue high-fidelity thermophysical modeling using real-time thermography
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9900965/
https://www.ncbi.nlm.nih.gov/pubmed/36748004
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