Estimation of skin optical properties with a Monte Carlo simulation and a genetic algorithm

article
Autores

Sanches Sampaio, Murilo

Barbosa Da Cruz Junior, Luismar

Tinós, Renato

Tan Moriyama, Lilian

Bachmann, Luciano

Data de Publicação

20 de janeiro de 2026

Resumo

Designing laser-based therapies and diagnostics requires knowledge of the tissue’s optical properties in order to avoid adverse effects such as burns and overdosing. These optical properties are usually estimated from measured reflectance and Monte Carlo (MC) light transport models, but most existing MC databases are built by sweeping parameters uniformly and often yield spectra that sit outside the range of real skin tones. This study closes this gap by guiding MC simulations with a color-space constraint. A three-layer skin model was implemented in PyXOpto, parameterized by biologically relevant variables and optimized by a genetic algorithm (GA) to ensure that the simulated colors remain within the bounds of the individual typology angle (ITA ∘ ). Validation against ex vivo human skin demonstrates high accuracy for different skin tones. These results indicate that the color-constrained framework can replicate and estimate the optical properties of real skin.

Citação

BibTeX
@online{sampaio,_murilo2026,
  author = {Sampaio, Murilo, Sanches and Da Cruz Junior, Luismar,
    Barbosa and Renato , Tinós and Moriyama, Lilian, Tan and Luciano ,
    Bachmann},
  title = {Estimation of skin optical properties with a Monte Carlo
    simulation and a genetic algorithm},
  volume = {65},
  number = {3},
  date = {2026-01-20},
  doi = {10.1364/AO.579461},
  langid = {pt-BR},
  abstract = {Designing laser-based therapies and diagnostics requires
    knowledge of the tissue’s optical properties in order to avoid
    adverse effects such as burns and overdosing. These optical
    properties are usually estimated from measured reflectance and Monte
    Carlo (MC) light transport models, but most existing MC databases
    are built by sweeping parameters uniformly and often yield spectra
    that sit outside the range of real skin tones. This study closes
    this gap by guiding MC simulations with a color-space constraint. A
    three-layer skin model was implemented in PyXOpto, parameterized by
    biologically relevant variables and optimized by a genetic algorithm
    (GA) to ensure that the simulated colors remain within the bounds of
    the individual typology angle (ITA ∘ ). Validation against ex vivo
    human skin demonstrates high accuracy for different skin tones.
    These results indicate that the color-constrained framework can
    replicate and estimate the optical properties of real skin.}
}
Por favor, cite este trabalho como:
Sampaio, Murilo, Sanches, Barbosa Da Cruz Junior, Luismar, Tinós Renato, Tan Moriyama, Lilian, and Bachmann Luciano. 2026. “Estimation of skin optical properties with a Monte Carlo simulation and a genetic algorithm.” Applied Optics. January 20, 2026. https://doi.org/10.1364/AO.579461.