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Broadband ultraviolet-visible optical property measurement in layered turbid media

机译:分层混浊介质中宽带紫外可见光光学性质的测量

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摘要

The ability to accurately measure layered biological tissue optical properties (OPs) may improve understanding of spectroscopic device performance and facilitate early cancer detection. Towards these goals, we have performed theoretical and experimental evaluations of an approach for broadband measurement of absorption and reduced scattering coefficients at ultraviolet-visible wavelengths. Our technique is based on neural network (NN) inverse models trained with diffuse reflectance data from condensed Monte Carlo simulations. Experimental measurements were performed from 350 to 600 nm with a fiber-optic-based reflectance spectroscopy system. Two-layer phantoms incorporating OPs relevant to normal and dysplastic mucosal tissue and superficial layer thicknesses of 0.22 and 0.44 mm were used to assess prediction accuracy. Results showed mean OP estimation errors of 19% from the theoretical analysis and 27% from experiments. Two-step NN modeling and nonlinear spectral fitting approaches helped improve prediction accuracy. While limitations and challenges remain, the results of this study indicate that our technique can provide moderately accurate estimates of OPs in layered turbid media.
机译:准确测量分层生物组织光学特性(OP)的能力可以增进对光谱设备性能的了解,并有助于早期癌症检测。为了实现这些目标,我们对宽带测量吸收率和降低的可见光散射系数的方法进行了理论和实验评估。我们的技术基于神经网络(NN)逆模型,该模型使用来自浓缩蒙特卡洛模拟的漫反射数据训练。使用基于光纤的反射光谱系统在350至600 nm范围内进行实验测量。两层体模结合了与正常和增生的粘膜组织相关的OP,以及0.22和0.44 mm的表层厚度,用于评估预测准确性。结果显示,理论分析得出的平均OP估计误差为19%,实验得出的平均OP估计误差为27%。两步NN建模和非线性频谱拟合方法有助于提高预测精度。尽管仍然存在局限和挑战,但这项研究的结果表明,我们的技术可以为分层混浊介质中的OP提供适度准确的估算。

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