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Efficient construction of robust artificial neural networks for accurate determination of superficial sample optical properties

机译:有效构建健壮的人工神经网络以准确确定表面样品的光学特性

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In general, diffuse reflectance spectroscopy (DRS) systems work with photon diffusion models to determine the absorption coefficient μa and reduced scattering coefficient μs' of turbid samples. However, in some DRS measurement scenarios, such as using short source-detector separations to investigate superficial tissues with comparable μa and μs', photon diffusion models might be invalid or might not have analytical solutions. In this study, a systematic workflow of constructing a rapid, accurate photon transport model that is valid at short source-detector separations (SDSs) and at a wide range of sample albedo is revealed. To create such a model, we first employed a GPU (Graphic Processing Unit) based Monte Carlo model to calculate the reflectance at various sample optical property combinations and established a database at high speed. The database was then utilized to train an artificial neural network (ANN) for determining the sample absorption and reduced scattering coefficients from the reflectance measured at several SDSs without applying spectral constraints. The robustness of the produced ANN model was rigorously validated. We evaluated the performance of a successfully trained ANN using tissue simulating phantoms. We also determined the 500-1000 nm absorption and reduced scattering spectra of in-vivo skin using our ANN model and found that the values agree well with those reported in several independent studies.
机译:通常,漫反射光谱(DRS)系统与光子扩散模型一起确定混浊样品的吸收系数μa和降低的散射系数μs'。但是,在某些DRS测量方案中,例如使用短的源-检测器分离来研究具有可比较的μa和μs'的浅表组织,光子扩散模型可能无效或可能没有解析解。在这项研究中,揭示了构建快速,准确的光子传输模型的系统工作流程,该模型在短的源-探测器分离(SDS)和广泛的样品反照率下有效。为了创建这样的模型,我们首先使用基于GPU(图形处理单元)的Monte Carlo模型来计算各种样品光学特性组合下的反射率,并建立了一个高速数据库。然后,利用该数据库训练一个人工神经网络(ANN),以便在不施加光谱约束的情况下,根据在多个SDS处测得的反射率来确定样品吸收率和减少的散射系数。严格验证了生成的ANN模型的鲁棒性。我们使用组织模拟体模评估了成功训练的ANN的性能。我们还使用我们的ANN模型确定了体内皮肤在500-1000 nm的吸收和减少的散射光谱,发现该值与几项独立研究报告的值吻合良好。

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