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Deep learning model for ultrafast quantification of blood flow in diffuse correlation spectroscopy

机译:弥漫性相关光谱中血流超快量化的深度学习模型

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摘要

Diffuse correlation spectroscopy (DCS) is increasingly used in the optical imaging field to assess blood flow in humans due to its non-invasive, real-time characteristics and its ability to provide label-free, bedside monitoring of blood flow changes. Previous DCS studies have utilized a traditional curve fitting of the analytical or Monte Carlo models to extract the blood flow changes, which are computationally demanding and less accurate when the signal to noise ratio decreases. Here, we present a deep learning model that eliminates this bottleneck by solving the inverse problem more than 2300% faster, with equivalent or improved accuracy compared to the nonlinear fitting with an analytical method. The proposed deep learning inverse model will enable real-time and accurate tissue blood flow quantification with the DCS technique.
机译:漫射相关光谱(DCS)越来越多地用于光学成像场,以评估人类的血流,由于其非侵入性,实时特性及其提供无标签,床边监测的血流变化的能力。以前的DCS研究利用了分析或蒙特卡罗模型的传统曲线拟合,以提取血流变化,这在信号到噪声比减小时计算得更加苛刻,更准确。在这里,我们介绍了一个深入的学习模型,通过使用分析方法的非线性配件来解决超过2300%的逆问题超过2300%,以超过2300%的逆问题。所提出的深度学习逆模型将通过DCS技术实现实时和准确的组织血流量化。

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