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A cost function approach for the analysis of time-resolved functional near-infrared spectroscopy (TR fNIRS) signals

机译:一种成本函数方法,用于分析时间分辨功能近红外光谱(TR fNIRS)信号

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Functional near-infrared spectroscopy (fNIRS) is a powerful clinical tool for monitoring hemoglobin concentration in brain tissues by analyzing absorption of scattered light. Since human brain is composed of multilayers including scalp, skull, and cerebral cortex, fNIRS signals need be analyzed with a multilayer tissue model. However, retrieving the optical properties of a multilayer tissue is often difficult because nonlinear fitting of absorption parameters from a scattered light signal by a tissue is ill-posed especially when the signal level is low. In this paper we introduce the cost function based masking technique for effective error minimization in the nonlinear fitting of fNIRS signals. We have shown that this method effectively reduces the influences of measurement errors with a newly defined cost function. Numerically simulated fNIRS data were generated for a two-layered tissue model and are used to extract the optical parameters of the two-layered tissue model. Accuracies of extracted parameters were compared with and without our proposed cost function.
机译:功能近红外光谱(fNIRS)是一种功能强大的临床工具,可通过分析散射光的吸收来监测脑组织中血红蛋白的浓度。由于人脑由包括头皮,头骨和大脑皮层的多层结构组成,因此需要使用多层组织模型分析fNIRS信号。然而,通常难以获得多层组织的光学性质,因为组织从散射光信号吸收参数的非线性拟合不适当地发生,特别是在信号水平较低时。在本文中,我们介绍了基于代价函数的掩蔽技术,以有效地最小化fNIRS信号的非线性拟合。我们已经表明,该方法通过新定义的成本函数有效地减少了测量误差的影响。为两层组织模型生成了数值模拟的fNIRS数据,并将其用于提取两层组织模型的光学参数。在有或没有我们建议的成本函数的情况下,比较了提取参数的准确性。

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