Graduate Institute of Biomedical Electronics and Bioinformatics, Taiwan.
National Taiwan Univ., Taiwan.
J Biomed Opt. 2022 Jun;27(8). doi: 10.1117/1.JBO.27.8.083021.
Quantifying subject-specific optical properties (OPs) including absorption and transport scattering coefficients of tissues in the human head could improve the modeling of photon propagation for the analysis of functional near-infrared spectroscopy (fNIRS) data and dosage quantification in therapeutic applications. Current methods employ diffuse approximation, which excludes a low-scattering cerebrospinal fluid compartment and causes errors.
This work aims to quantify OPs of the scalp, skull, and gray matter in vivo based on accurate Monte Carlo (MC) modeling.
Iterative curve fitting was applied to quantify tissue OPs from multidistance continuous-wave NIR reflectance spectra. An artificial neural network (ANN) was trained using MC-simulated reflectance values based on subject-specific voxel-based tissue models to replace MC simulations as the forward model in curve fitting. To efficiently generate sufficient data for training the ANN, the efficiency of MC simulations was greatly improved by white MC simulations, increasing the detectors' acceptance angle, and building a lookup table for interpolation.
The trained ANN was six orders of magnitude faster than the original MC simulations. OPs of the three tissue compartments were quantified from NIR reflectance spectra measured at the forehead of five healthy subjects and their uncertainties were estimated.
This work demonstrated an MC-based iterative curve fitting method to quantify subject-specific tissue OPs in-vivo, with all OPs except for scattering coefficients of scalp within the ranges reported in the literature, which could aid the modeling of photon propagation in human heads.
定量人体头部组织的特定主体光学特性(OPs),包括吸收和传输散射系数,可改善光子在功能近红外光谱(fNIRS)数据分析和治疗应用剂量量化中的传播建模。当前的方法采用漫射近似,该方法排除了低散射的脑脊液隔室并导致误差。
本工作旨在基于准确的蒙特卡罗(MC)建模来定量头皮、颅骨和灰质的 OPs。
迭代曲线拟合用于从多距离连续波近红外反射率光谱中定量组织 OPs。人工神经网络(ANN)使用基于基于个体的体素组织模型的 MC 模拟反射率值进行训练,以替代 MC 模拟作为曲线拟合的正向模型。为了有效地生成足够的数据来训练 ANN,通过白色 MC 模拟、增加探测器接受角和构建插值的查找表,极大地提高了 MC 模拟的效率。
经过训练的 ANN 比原始 MC 模拟快六个数量级。从五位健康受试者的额头上测量的近红外反射率光谱中定量了三个组织隔室的 OPs,并估计了它们的不确定性。
本工作展示了一种基于 MC 的迭代曲线拟合方法,可以定量体内特定主体的组织 OPs,除了头皮的散射系数外,所有 OPs 都在文献报道的范围内,这有助于在人体头部中进行光子传播建模。