In this work, we revise the preparation procedure and conduct an in depth characterization of optical properties for the recently proposed silicone-based tissue-mimicking optical phantoms in the spectral range from 475 to 925 nm. The optical properties are characterized in terms of refractive index and its temperature dependence, absorption and reduced scattering coefficients and scattering phase function related quantifiers. The scattering phase function and related quantifiers of the optical phantoms are first assessed within the framework of the Mie theory by using the measured refractive index of SiliGlass and size distribution of the hollow silica spherical particles that serve as scatterers. A set of purely absorbing optical phantoms in cuvettes is used to evaluate the linearity of the absorption coefficient with respect to the concentration of black pigment that serves as the absorber. Finally, the optical properties in terms of the absorption and reduced scattering coefficients and the subdiffusive scattering phase function quantifier γ are estimated for a subset of phantoms from spatially resolved reflectance using deep learning aided inverse models. To this end, an optical fiber probe with six linearly arranged optical fibers is used to collect the backscattered light at small and large distances from the source fiber. The underlying light propagation modeling is based on the stochastic Monte Carlo method that accounts for all the details of the optical fiber probe.
Monodisperse polystyrene microspheres are often utilized in optical
phantoms since optical properties such as the scattering coefficient
and the scattering phase function can be calculated using the Mie
theory. However, the calculated values depend on the inherent physical
parameters of the microspheres which include the size, refractive
index, and solid content. These parameters are often provided only
approximately or can be affected by long shelf times. We propose a
simple method to obtain the values of these parameters by measuring
the collimated transmission of polystyrene microsphere suspensions
from which the wavelength-dependent scattering coefficient can be
calculated using the Beer-Lambert law. Since a wavelength-dependent
scattering coefficient of a single suspension is insufficient to
uniquely derive the size, refractive index and solid content by the
Mie theory, the crucial and novel step involves suspending the
polystyrene microspheres in aqueous sucrose solutions with different
sucrose concentrations that modulates the refractive index of the
medium and yields several wavelength-dependent scattering
coefficients. With the proposed method, we are able to obtain the
refractive index within 0.2% in the wavelength range from 500
to 800 nm, the microsphere size to approximately 15 nm and solid
content within 2% of their respective reference values.
In this work, we introduce a framework for efficient and accurate Monte Carlo (MC) simulations of spatially resolved reflectance (SRR) acquired by optical fiber probes that account for all the details of the probe tip including reflectivity of the stainless steel and the properties of the epoxy fill and optical fibers. While using full details of the probe tip is essential for accurate MC simulations of SRR, the break-down of the radial symmetry in the detection scheme leads to about two orders of magnitude longer simulation times. The introduced framework mitigates this performance degradation, by an efficient reflectance regression model that maps SRR obtained by fast MC simulations based on a simplified probe tip model to SRR simulated using the full details of the probe tip. We show that a small number of SRR samples is sufficient to determine the parameters of the regression model. Finally, we use the regression model to simulate SRR for a stainless steel optical probe with six linearly placed fibers and experimentally validate the framework through the use of inverse models for estimation of absorption and reduced scattering coefficients and subdiffusive scattering phase function quantifiers.
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