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首页> 外文期刊>Journal of Integrative Neuroscience (JIN >OPTIMAL HRF AND SMOOTHING PARAMETERS FOR FMRI TIME SERIES WITHIN AN AUTOREGRESSIVE MODELING FRAMEWORK
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OPTIMAL HRF AND SMOOTHING PARAMETERS FOR FMRI TIME SERIES WITHIN AN AUTOREGRESSIVE MODELING FRAMEWORK

机译:自回归建模框架中FMRI时间序列的最佳HRF和平滑参数

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The analysis of time series obtained by functional magnetic resonance imaging (FMRI) may be approached by fitting predictive parametric models, such as nearest-neighbor autoregressive models with exogeneous input (NNARX). As a part of the modeling procedure, it is possible to apply instantaneous linear transformations to the data. Spatial smoothing, a common preprocessing step, may be interpreted as such a transformation. The autoregressive parameters may be constrained, such that they provide a response behavior that corresponds to the canonical haemodynamic response function (HRF). We present an algorithm for estimating the parameters of the linear transformations and of the HRF within a rigorous maximum-likelihood framework. Using this approach, an optimal amount of both the spatial smoothing and the HRF can be estimated simultaneously for a given FMRI data set. An example from a motor-task experiment is discussed. It is found that, for this data set, weak, but non-zero, spatial smoothing is optimal. Furthermore, it is demonstrated that activated regions can be estimated within the maximum-likelihood framework.
机译:通过功能性磁共振成像(FMRI)获得的时间序列分析可以通过拟合预测参数模型来进行,例如具有外源输入的最近邻自回归模型(NNARX)。作为建模过程的一部分,可以对数据应用瞬时线性变换。空间平滑(一个常见的预处理步骤)可以解释为这种转换。自回归参数可以被约束,使得它们提供与规范的血液动力学响应函数(HRF)相对应的响应行为。我们提出了一种算法,用于在严格的最大似然框架内估算线性变换和HRF的参数。使用这种方法,对于给定的FMRI数据集,可以同时估计空间平滑和HRF的最佳量。讨论了一个运动任务实验的例子。已经发现,对于该数据集,弱但非零的空间平滑是最佳的。此外,证明了可以在最大似然框架内估计活化区域。

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