首页> 外文期刊>Physics in medicine and biology. >Non-invasive determination of the absorption coefficient of the brain from time-resolved reflectance using a neural network.
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Non-invasive determination of the absorption coefficient of the brain from time-resolved reflectance using a neural network.

机译:使用神经网络根据时间分辨的反射率非侵入式确定大脑的吸收系数。

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摘要

We investigated the performance of a neural network for derivation of the absorption coefficient of the brain from simulated non-invasive time-resolved reflectance measurements on the head. A five-layered geometry was considered assuming that the optical properties (except the absorption coefficient of the brain) and the thickness of all layers were known with an uncertainty. A solution of the layered diffusion equation was used to train the neural network. We determined the absorption coefficient of the brain with an RMS error of <6% from reflectance data at a single distance calculated by diffusion theory. By applying the neural network to reflectance curves obtained from Monte Carlo simulations, similar errors were found.
机译:我们研究了从头上的模拟无创时间分辨反射率测量中得出神经吸收系数的神经网络的性能。考虑到五层几何结构,假设已知光学特性(大脑的吸收系数除外)和所有层的厚度不确定。分层扩散方程的解用于训练神经网络。我们根据扩散理论计算出的单个距离处的反射率数据确定了RMS误差<6%的大脑吸收系数。通过将神经网络应用于从蒙特卡洛模拟获得的反射率曲线,发现了类似的误差。

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