University of Vaasa, Department of Electrical and Energy Engineering, Automation Technology, Wolffintie 34, Vaasa 65101 Finland.
J Biomed Opt. 2011 Apr;16(4):046012. doi: 10.1117/1.3562976.
The concentrations of blood and melanin in skin can be estimated based on the reflectance of light. Many models for this estimation have been built, such as Monte Carlo simulation, diffusion models, and the differential modified Beer-Lambert law. The optimization-based methods are too slow for chromophore mapping of high-resolution spectral images, and the differential modified Beer-Lambert is not often accurate enough. Optimal coefficients for the differential Beer-Lambert model are calculated by differentiating the diffusion model, optimized to the normal skin spectrum. The derivatives are then used in predicting the difference in chromophore concentrations from the difference in absorption spectra. The accuracy of the method is tested both computationally and experimentally using a Monte Carlo multilayer simulation model, and the data are measured from the palm of a hand during an Allen's test, which modulates the blood content of skin. The correlations of the given and predicted blood, melanin, and oxygen saturation levels are correspondingly r = 0.94, r = 0.99, and r = 0.73. The prediction of the concentrations for all pixels in a 1-megapixel image would take ∼ 20 min, which is orders of magnitude faster than the methods based on optimization during the prediction.
基于光的反射,血液和黑色素在皮肤中的浓度可以被估算出来。许多估算方法已经被建立,例如蒙卡诺模拟、扩散模型和微分修正 Beer-Lambert 定律。基于优化的方法对于高分辨率光谱图像的色团测绘来说太慢了,而微分修正 Beer-Lambert 定律也不总是足够准确。通过将扩散模型微分,再将微分结果优化至正常皮肤光谱,可计算出微分 Beer-Lambert 模型的最优系数。然后使用这些导数来预测吸收光谱差异引起的色团浓度差异。该方法的准确性通过使用蒙特卡罗多层模拟模型进行了计算和实验验证,并通过对 Allen 测试期间调制皮肤血液含量的手掌进行数据测量得到。所给和预测的血液、黑色素和氧饱和度水平的相关性分别为 r = 0.94、r = 0.99 和 r = 0.73。对于 100 万像素图像中的所有像素的浓度预测,需要大约 20 分钟,这比预测过程中基于优化的方法快了几个数量级。