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Adaptive hemodynamic response function to optimize differential temporal information of hemoglobin signals in functional near-infrared spectroscopy

机译:自适应血液动力学响应功能可优化功能性近红外光谱中血红蛋白信号的时空差异信息

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It has been nearly twenty years since functional near-infrared spectroscopy (fNIRS) was first applied to assessing human brain functions. It has now become widely accepted as a common functional imaging modality with more than 100 publications of fNIRS-related scientific literature annually. However, universal analytical methods for fNIRS data have yet to be established. Although not frequently mentioned, temporal analysis of fNIRS data also poses a technical challenge: how oxygenated and deoxygenated hemoglobin (Hb) signals should be treated. With its analogy to fMRI, a general linear model (GLM) with regression to a canonical hemodynamic response function (HRF) has often been used. However, the Hb parameters do not necessarily follow the same behavior as the BOLD signal: rather, we often encounter different temporal profiles for the two Hb signals. Here we introduce adaptive methods to find the optimal HRF for temporal analysis of fNIRS data. Application of the GLM with regression to a temporally optimized HRF on the functional activation data during an overt confrontation naming task revealed different temporal structures for oxy-Hb and deoxy-Hb signals, with the latter having substantial temporal delay. However, when the temporally optimized HRF was used, the two parameters yielded reasonably compatible activation patterns including activation in classical language-related areas of the left hemisphere. These results suggest the potential use of the GLM with regression to an adaptive HRF to fully utilize temporal information of both Hb parameters.
机译:自功能近红外光谱法(fNIRS)首次用于评估人脑功能以来,已有近二十年的历史。如今,它已被广泛接受为一种常见的功能成像方式,每年有100多种与fNIRS相关的科学文献出版物。但是,尚未建立针对fNIRS数据的通用分析方法。尽管未经常提及,但fNIRS数据的时间分析也带来了技术挑战:应如何处理含氧和脱氧血红蛋白(Hb)信号。与fMRI类似,通常使用回归典型血液动力学响应函数(HRF)的通用线性模型(GLM)。但是,Hb参数不一定遵循与BOLD信号相同的行为:相反,我们经常会遇到两个Hb信号不同的时间分布。在这里,我们介绍了自适应方法,以找到用于fNIRS数据时间分析的最佳HRF。在公开对抗命名任务期间,将GLM回归应用于功能激活数据上的时间优化HRF时,发现oxy-Hb和deoxy-Hb信号的时间结构不同,后者具有较大的时间延迟。但是,当使用经过时间优化的HRF时,这两个参数会产生合理兼容的激活模式,包括在左半球与语言相关的经典区域中的激活。这些结果表明,将GLM潜在地用于回归自适应HRF以充分利用两个Hb参数的时间信息。

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