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Predictive model for the quantitative analysis of human skin using photothermal radiometry and diffuse reflectance spectroscopy

机译:使用光热辐射法和漫反射光谱法对人体皮肤进行定量分析的预测模型

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摘要

We have recently introduced a novel methodology for the noninvasive analysis of the structure and composition of human skin . The approach combines pulsed photothermal radiometry (PPTR), involving time-resolved measurements of mid-infrared emission after irradiation with a millisecond light pulse, and diffuse reflectance spectroscopy (DRS) in the visible part of the spectrum. Simultaneous fitting of both data sets with respective predictions from a numerical model of light transport in human skin enables the assessment of the contents of skin chromophores (melanin, oxy-, and deoxy-hemoglobin), as well as scattering properties and thicknesses of the epidermis and dermis. However, the involved iterative optimization of 14 skin model parameters using a numerical forward model ( , inverse Monte Carlo - IMC) is computationally very expensive. In order to overcome this drawback, we have constructed a very fast predictive model (PM) based on machine learning. The PM involves random forests, trained on ∼9,000 examples computed using our forward MC model. We show that the performance of such a PM is very satisfying, both in objective testing using cross-validation and in direct comparisons with the IMC procedure. We also present a hybrid approach (HA), which combines the speed of the PM with versatility of the IMC procedure. Compared with the latter, the HA improves both the accuracy and robustness of the inverse analysis, while significantly reducing the computation times.
机译:我们最近推出了一种用于人体皮肤结构和成分的非侵入性分析的新方法。该方法结合了脉冲光热辐射法(PPTR),该方法涉及在毫秒光脉冲照射后对中红外发射的时间分辨测量,以及光谱可见部分的漫反射光谱(DRS)。将两个数据集与人类皮肤中光传输数值模型的相应预测同时拟合,可以评估皮肤发色团(黑色素,氧化性和脱氧性血红蛋白)的含量,以及表皮的散射特性和厚度和真皮。但是,使用数值正向模型(,逆蒙特卡洛-IMC)对14种皮肤模型参数进行的迭代优化在计算上非常昂贵。为了克服此缺点,我们基于机器学习构建了非常快速的预测模型(PM)。 PM涉及随机森林,使用我们的前向MC模型计算出的约9,000个示例得到了训练。我们证明,无论是在使用交叉验证的客观测试中,还是与IMC程序的直接比较中,这种PM的性能都非常令人满意。我们还提出了一种混合方法(HA),该方法将PM的速度与IMC程序的多功能性结合在一起。与后者相比,HA可以提高反分析的准确性和鲁棒性,同时显着减少了计算时间。

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