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Current Status and Issues Regarding Pre-processing of fNIRS Neuroimaging Data: An Investigation of Diverse Signal Filtering Methods Within a General Linear Model Framework

机译:fNIRS神经影像数据预处理的现状和问题:在一般线性模型框架内对多种信号过滤方法的研究

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摘要

Functional near-infrared spectroscopy (fNIRS) research articles show a large heterogeneity in the analysis approaches and pre-processing procedures. Additionally, there is often a lack of a complete description of the methods applied, necessary for study replication or for results comparison. The aims of this paper were (i) to review and investigate which information is generally included in published fNIRS papers, and (ii) to define a signal pre-processing procedure to set a common ground for standardization guidelines. To this goal, we have reviewed 110 fNIRS articles published in 2016 in the field of cognitive neuroscience, and performed a simulation analysis with synthetic fNIRS data to optimize the signal filtering step before applying the GLM method for statistical inference. Our results highlight the fact that many papers lack important information, and there is a large variability in the filtering methods used. Our simulations demonstrated that the optimal approach to remove noise and recover the hemodynamic response from fNIRS data in a GLM framework is to use a 1000th order band-pass Finite Impulse Response filter. Based on these results, we give preliminary recommendations as to the first step toward improving the analysis of fNIRS data and dissemination of the results.
机译:功能近红外光谱(fNIRS)研究文章显示,分析方法和预处理程序存在很大的异质性。此外,通常缺乏对研究方法或结果比较所必需的所用方法的完整描述。本文的目的是(i)审查和调查已发布的fNIRS论文中通常包含哪些信息,以及(ii)定义信号预处理程序以为标准化指南奠定共同基础。为此,我们回顾了2016年发表在认知神经科学领域的110篇fNIRS文章,并在应用GLM方法进行统计推断之前,使用合成的fNIRS数据进行了仿真分析,以优化信号过滤步骤。我们的结果突出了以下事实:许多论文缺乏重要信息,并且所使用的过滤方法也存在很大差异。我们的仿真表明,在GLM框架中从fNIRS数据中消除噪声并恢复血液动力学响应的最佳方法是使用1000阶带通有限脉冲响应滤波器。基于这些结果,我们就改善fNIRS数据的分析和结果的传播的第一步提出了初步建议。

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