Cargando…

Imaging sub-diffuse optical properties of cancerous and normal skin tissue using machine learning-aided spatial frequency domain imaging

Significance: Sub-diffuse optical properties may serve as useful cancer biomarkers, and wide-field heatmaps of these properties could aid physicians in identifying cancerous tissue. Sub-diffuse spatial frequency domain imaging (sd-SFDI) can reveal such wide-field maps, but the current time cost of e...

Descripción completa

Detalles Bibliográficos
Autores principales: Stier, Andrew C., Goth, Will, Hurley, Aislinn, Brown, Treshayla, Feng, Xu, Zhang, Yao, Lopes, Fabiana C. P. S., Sebastian, Katherine R., Ren, Pengyu, Fox, Matthew C., Reichenberg, Jason S., Markey, Mia K., Tunnell, James W.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Society of Photo-Optical Instrumentation Engineers 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8459901/
https://www.ncbi.nlm.nih.gov/pubmed/34558235
http://dx.doi.org/10.1117/1.JBO.26.9.096007
_version_ 1784571628208783360
author Stier, Andrew C.
Goth, Will
Hurley, Aislinn
Brown, Treshayla
Feng, Xu
Zhang, Yao
Lopes, Fabiana C. P. S.
Sebastian, Katherine R.
Ren, Pengyu
Fox, Matthew C.
Reichenberg, Jason S.
Markey, Mia K.
Tunnell, James W.
author_facet Stier, Andrew C.
Goth, Will
Hurley, Aislinn
Brown, Treshayla
Feng, Xu
Zhang, Yao
Lopes, Fabiana C. P. S.
Sebastian, Katherine R.
Ren, Pengyu
Fox, Matthew C.
Reichenberg, Jason S.
Markey, Mia K.
Tunnell, James W.
author_sort Stier, Andrew C.
collection PubMed
description Significance: Sub-diffuse optical properties may serve as useful cancer biomarkers, and wide-field heatmaps of these properties could aid physicians in identifying cancerous tissue. Sub-diffuse spatial frequency domain imaging (sd-SFDI) can reveal such wide-field maps, but the current time cost of experimentally validated methods for rendering these heatmaps precludes this technology from potential real-time applications. Aim: Our study renders heatmaps of sub-diffuse optical properties from experimental sd-SFDI images in real time and reports these properties for cancerous and normal skin tissue subtypes. Approach: A phase function sampling method was used to simulate sd-SFDI spectra over a wide range of optical properties. A machine learning model trained on these simulations and tested on tissue phantoms was used to render sub-diffuse optical property heatmaps from sd-SFDI images of cancerous and normal skin tissue. Results: The model accurately rendered heatmaps from experimental sd-SFDI images in real time. In addition, heatmaps of a small number of tissue samples are presented to inform hypotheses on sub-diffuse optical property differences across skin tissue subtypes. Conclusion: These results bring the overall process of sd-SFDI a fundamental step closer to real-time speeds and set a foundation for future real-time medical applications of sd-SFDI such as image guided surgery.
format Online
Article
Text
id pubmed-8459901
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Society of Photo-Optical Instrumentation Engineers
record_format MEDLINE/PubMed
spelling pubmed-84599012021-09-27 Imaging sub-diffuse optical properties of cancerous and normal skin tissue using machine learning-aided spatial frequency domain imaging Stier, Andrew C. Goth, Will Hurley, Aislinn Brown, Treshayla Feng, Xu Zhang, Yao Lopes, Fabiana C. P. S. Sebastian, Katherine R. Ren, Pengyu Fox, Matthew C. Reichenberg, Jason S. Markey, Mia K. Tunnell, James W. J Biomed Opt Imaging Significance: Sub-diffuse optical properties may serve as useful cancer biomarkers, and wide-field heatmaps of these properties could aid physicians in identifying cancerous tissue. Sub-diffuse spatial frequency domain imaging (sd-SFDI) can reveal such wide-field maps, but the current time cost of experimentally validated methods for rendering these heatmaps precludes this technology from potential real-time applications. Aim: Our study renders heatmaps of sub-diffuse optical properties from experimental sd-SFDI images in real time and reports these properties for cancerous and normal skin tissue subtypes. Approach: A phase function sampling method was used to simulate sd-SFDI spectra over a wide range of optical properties. A machine learning model trained on these simulations and tested on tissue phantoms was used to render sub-diffuse optical property heatmaps from sd-SFDI images of cancerous and normal skin tissue. Results: The model accurately rendered heatmaps from experimental sd-SFDI images in real time. In addition, heatmaps of a small number of tissue samples are presented to inform hypotheses on sub-diffuse optical property differences across skin tissue subtypes. Conclusion: These results bring the overall process of sd-SFDI a fundamental step closer to real-time speeds and set a foundation for future real-time medical applications of sd-SFDI such as image guided surgery. Society of Photo-Optical Instrumentation Engineers 2021-09-23 2021-09 /pmc/articles/PMC8459901/ /pubmed/34558235 http://dx.doi.org/10.1117/1.JBO.26.9.096007 Text en © 2021 The Authors https://creativecommons.org/licenses/by/4.0/Published by SPIE under a Creative Commons Attribution 4.0 International License. Distribution or reproduction of this work in whole or in part requires full attribution of the original publication, including its DOI.
spellingShingle Imaging
Stier, Andrew C.
Goth, Will
Hurley, Aislinn
Brown, Treshayla
Feng, Xu
Zhang, Yao
Lopes, Fabiana C. P. S.
Sebastian, Katherine R.
Ren, Pengyu
Fox, Matthew C.
Reichenberg, Jason S.
Markey, Mia K.
Tunnell, James W.
Imaging sub-diffuse optical properties of cancerous and normal skin tissue using machine learning-aided spatial frequency domain imaging
title Imaging sub-diffuse optical properties of cancerous and normal skin tissue using machine learning-aided spatial frequency domain imaging
title_full Imaging sub-diffuse optical properties of cancerous and normal skin tissue using machine learning-aided spatial frequency domain imaging
title_fullStr Imaging sub-diffuse optical properties of cancerous and normal skin tissue using machine learning-aided spatial frequency domain imaging
title_full_unstemmed Imaging sub-diffuse optical properties of cancerous and normal skin tissue using machine learning-aided spatial frequency domain imaging
title_short Imaging sub-diffuse optical properties of cancerous and normal skin tissue using machine learning-aided spatial frequency domain imaging
title_sort imaging sub-diffuse optical properties of cancerous and normal skin tissue using machine learning-aided spatial frequency domain imaging
topic Imaging
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8459901/
https://www.ncbi.nlm.nih.gov/pubmed/34558235
http://dx.doi.org/10.1117/1.JBO.26.9.096007
work_keys_str_mv AT stierandrewc imagingsubdiffuseopticalpropertiesofcancerousandnormalskintissueusingmachinelearningaidedspatialfrequencydomainimaging
AT gothwill imagingsubdiffuseopticalpropertiesofcancerousandnormalskintissueusingmachinelearningaidedspatialfrequencydomainimaging
AT hurleyaislinn imagingsubdiffuseopticalpropertiesofcancerousandnormalskintissueusingmachinelearningaidedspatialfrequencydomainimaging
AT browntreshayla imagingsubdiffuseopticalpropertiesofcancerousandnormalskintissueusingmachinelearningaidedspatialfrequencydomainimaging
AT fengxu imagingsubdiffuseopticalpropertiesofcancerousandnormalskintissueusingmachinelearningaidedspatialfrequencydomainimaging
AT zhangyao imagingsubdiffuseopticalpropertiesofcancerousandnormalskintissueusingmachinelearningaidedspatialfrequencydomainimaging
AT lopesfabianacps imagingsubdiffuseopticalpropertiesofcancerousandnormalskintissueusingmachinelearningaidedspatialfrequencydomainimaging
AT sebastiankatheriner imagingsubdiffuseopticalpropertiesofcancerousandnormalskintissueusingmachinelearningaidedspatialfrequencydomainimaging
AT renpengyu imagingsubdiffuseopticalpropertiesofcancerousandnormalskintissueusingmachinelearningaidedspatialfrequencydomainimaging
AT foxmatthewc imagingsubdiffuseopticalpropertiesofcancerousandnormalskintissueusingmachinelearningaidedspatialfrequencydomainimaging
AT reichenbergjasons imagingsubdiffuseopticalpropertiesofcancerousandnormalskintissueusingmachinelearningaidedspatialfrequencydomainimaging
AT markeymiak imagingsubdiffuseopticalpropertiesofcancerousandnormalskintissueusingmachinelearningaidedspatialfrequencydomainimaging
AT tunnelljamesw imagingsubdiffuseopticalpropertiesofcancerousandnormalskintissueusingmachinelearningaidedspatialfrequencydomainimaging