Open Access
23 September 2021 Imaging sub-diffuse optical properties of cancerous and normal skin tissue using machine learning-aided spatial frequency domain imaging
Andrew C. Stier, Will Goth, Aislinn Hurley, Treshayla Brown, Xu Feng, Yao Zhang, Fabiana C. P. S. Lopes, Katherine R. Sebastian, Pengyu Ren, Matthew C. Fox, Jason S. Reichenberg, Mia K. Markey, James W. Tunnell
Author Affiliations +
Abstract

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.

CC BY: © The Authors. 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.
Andrew C. Stier, Will Goth, Aislinn Hurley, Treshayla Brown, Xu Feng, Yao Zhang, Fabiana C. P. S. Lopes, Katherine R. Sebastian, Pengyu Ren, Matthew C. Fox, Jason S. Reichenberg, Mia K. Markey, and James W. Tunnell "Imaging sub-diffuse optical properties of cancerous and normal skin tissue using machine learning-aided spatial frequency domain imaging," Journal of Biomedical Optics 26(9), 096007 (23 September 2021). https://doi.org/10.1117/1.JBO.26.9.096007
Received: 17 February 2021; Accepted: 27 August 2021; Published: 23 September 2021
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CITATIONS
Cited by 8 scholarly publications.
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KEYWORDS
Optical properties

Tissue optics

Tissues

Skin

Data modeling

Spatial frequencies

Monte Carlo methods

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