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Joint maximum likelihood estimation of the fMRI hemodynamic response function and activation

机译:fMRI血液动力学反应功能和激活的联合最大似然估计

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Modeling the hemodynamic response function (HRF) and estimating the activation level are two important aspects in the statistical analysis of the functional Magnetic Resonance Imaging (fMRI). It is known that the HRF varies between experiments, subjects, and brain regions. A good model should be able to capture these variabilities. On one hand, a good HRF model results in a better activation detection; on the other hand, active voxels need to be defined for the estimation of the HRF. It has been shown that in a homogenous Region Of Interest (ROI), neighbor voxels have the same HRF shape with varying magnitude. Therefore, we propose a joint maximum likelihood estimation of the HRF and activation level in a ROI. There is no assumption on the exact shape of the HRF, thus it is possible to capture the HRF variabilities. The proposed method uses the rank one approximation of the data matrix, which is very convenient to calculate using the singular value decomposition (SVD). Results on the simulated data show that the joint estimate of the HRF and activation levels in a ROI are precise estimates, which are obtained without any assumption on the exact shape of the HRF.
机译:在功能磁共振成像(fMRI)的统计分析中,对血液动力学响应函数(HRF)建模和估计激活水平是两个重要方面。众所周知,HRF在实验,受试者和大脑区域之间会有所不同。一个好的模型应该能够捕获这些差异。一方面,良好的HRF模型可导致更好的激活检测;另一方面,另一方面,需要定义活动体素来估计HRF。已经显示,在同质的关注区域(ROI)中,相邻体素具有相同的HRF形状,但幅度不同。因此,我们提出了HRF和ROI中激活水平的联合最大似然估计。没有假设HRF的确切形状,因此有可能捕获HRF的变化。所提出的方法使用数据矩阵的秩近似,这非常方便使用奇异值分解(SVD)进行计算。模拟数据的结果表明,对HRF和ROI中激活水平的联合估计是精确的估计,无需对HRF的确切形状进行任何假设即可获得这些估计。

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