» Articles » PMID: 37342718

Physics-guided Neural Network for Tissue Optical Properties Estimation

Overview
Specialty Radiology
Date 2023 Jun 21
PMID 37342718
Authors
Affiliations
Soon will be listed here.
Abstract

Finding the optical properties of tissue is essential for various biomedical diagnostic/therapeutic applications such as monitoring of blood oxygenation, tissue metabolism, skin imaging, photodynamic therapy, low-level laser therapy, and photo-thermal therapy. Hence, the research for more accurate and versatile optical properties estimation techniques has always been a primary interest of researchers, especially in the field of bioimaging and bio-optics. In the past, most of the prediction methods were based on physics-based models such as the pronounced diffusion approximation method. In more recent years, with the advancement and growing popularity of machine learning techniques, most of the prediction methods are data-driven. While both methods have been proven to be useful, each of them suffers from several shortcomings that could be complemented by their counterparts. Thus, there is a need to bring the two domains together to obtain superior prediction accuracy and generalizability. In this work, we proposed a physics-guided neural network (PGNN) for tissue optical properties regression which integrates physics prior and constraint into the artificial neural network (ANN) model. With this method, we have demonstrated superior generalizability of PGNN compared to its pure ANN counterpart. The prediction accuracy and generalizability of the network were evaluated on single-layered tissue samples simulated with Monte Carlo simulation. Two different test datasets, the in-domain test dataset and out-domain dataset were used to evaluate in-domain generalizability and out-domain generalizability, respectively. The physics-guided neural network (PGNN) showed superior generalizability for both in-domain and out-domain prediction compared to pure ANN.

Citing Articles

Application of transfer learning for rapid calibration of spatially resolved diffuse reflectance probes for extraction of tissue optical properties.

Hannan M, Baran T J Biomed Opt. 2024; 29(2):027004.

PMID: 38419753 PMC: 10901350. DOI: 10.1117/1.JBO.29.2.027004.


Principles, developments, and applications of spatially resolved spectroscopy in agriculture: a review.

Xia Y, Liu W, Meng J, Hu J, Liu W, Kang J Front Plant Sci. 2024; 14:1324881.

PMID: 38269139 PMC: 10805836. DOI: 10.3389/fpls.2023.1324881.


Importance sampling-accelerated simulation of full-spectrum backscattered diffuse reflectance.

Mao J, Ling Y, Xue P, Su Y Biomed Opt Express. 2023; 14(9):4644-4659.

PMID: 37791287 PMC: 10545175. DOI: 10.1364/BOE.495489.

References
1.
Lathuiliere S, Mesejo P, Alameda-Pineda X, Horaud R . A Comprehensive Analysis of Deep Regression. IEEE Trans Pattern Anal Mach Intell. 2019; 42(9):2065-2081. DOI: 10.1109/TPAMI.2019.2910523. View

2.
Wang S, Chen J, Zhang F, Zhao M, Cui X, Chen S . Accelerating Monte Carlo simulation of light propagation in tissue mimicking turbid medium based on generative adversarial networks. Med Phys. 2021; 49(2):1209-1215. DOI: 10.1002/mp.15350. View

3.
Chen Y, Tseng S . Efficient construction of robust artificial neural networks for accurate determination of superficial sample optical properties. Biomed Opt Express. 2015; 6(3):747-60. PMC: 4361430. DOI: 10.1364/BOE.6.000747. View

4.
Panigrahi S, Gioux S . Machine learning approach for rapid and accurate estimation of optical properties using spatial frequency domain imaging. J Biomed Opt. 2018; 24(7):1-6. PMC: 6995874. DOI: 10.1117/1.JBO.24.7.071606. View

5.
Shen H, Wang G . A tetrahedron-based inhomogeneous Monte Carlo optical simulator. Phys Med Biol. 2010; 55(4):947-62. PMC: 2858330. DOI: 10.1088/0031-9155/55/4/003. View