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Development of the Complex General Linear Model in the Fourier Domain: Application to fMRI Multiple Input-Output Evoked Responses for Single Subjects

机译:傅立叶域中的复杂通用线性模型的开发:在单个对象的fMRI多输入输出诱发反应中的应用

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摘要

A linear time-invariant model based on statistical time series analysis in the Fourier domain for single subjects is further developed and applied to functional MRI (fMRI) blood-oxygen level-dependent (BOLD) multivariate data. This methodology was originally developed to analyze multiple stimulus input evoked response BOLD data. However, to analyze clinical data generated using a repeated measures experimental design, the model has been extended to handle multivariate time series data and demonstrated on control and alcoholic subjects taken from data previously analyzed in the temporal domain. Analysis of BOLD data is typically carried out in the time domain where the data has a high temporal correlation. These analyses generally employ parametric models of the hemodynamic response function (HRF) where prewhitening of the data is attempted using autoregressive (AR) models for the noise. However, this data can be analyzed in the Fourier domain. Here, assumptions made on the noise structure are less restrictive, and hypothesis tests can be constructed based on voxel-specific nonparametric estimates of the hemodynamic transfer function (HRF in the Fourier domain). This is especially important for experimental designs involving multiple states (either stimulus or drug induced) that may alter the form of the response function.
机译:进一步开发了基于傅立叶域中针对单个受试者的统计时间序列分析的线性时不变模型,并将其应用于功能性MRI(fMRI)血氧水平依赖性(BOLD)多元数据。该方法最初是为了分析多个刺激输入引起的反应BOLD数据而开发的。但是,为了分析使用重复测量实验设计生成的临床数据,该模型已扩展为处理多元时间序列数据,并在对照和酒精对象中进行了演示,这些对象是从先前在时域中分析的数据中提取的。 BOLD数据的分析通常在时域中进行,其中数据具有较高的时间相关性。这些分析通常使用血液动力学响应函数(HRF)的参数模型,其中使用自回归(AR)模型对噪声进行数据预白化。但是,可以在傅立叶域中分析此数据。在此,对噪声结构的假设限制较少,并且可以基于血流动力学传递函数(傅里叶域中的HRF)的体素特定的非参数估计来构建假设检验。这对于涉及可能改变响应功能形式的多种状态(刺激或药物诱导)的实验设计尤其重要。

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