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Regularized estimation of hemodynamic response function for fMRI data

机译:fMRI数据的血流动力学响应函数的正规估计

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One of the primary goals in analyzing fMRI data is to estimate the Hemodynamic Response Function (HRF), which is a large-dimensional parameter vector possessing some form of sparsity. This paper introduces a varyingdimensional model for the HRF, and develops novel regularization methods for estimating the HRF from fMRI time series via incorporating the sparsity feature. Particularly, we present three types of penalty choice methods: the Lasso, the adaptive Lasso and the SCAD. Simulation studies demonstrate the advantages of regularization methods, in terms of sparsity recovery, over conventional non-regularized approaches which restrict the HRF to be fixed low dimensional without capturing the sparsity structure. We illustrate the regularized methods for estimating the HRF using a real fMRI data set and compare with results offered by a popular imaging analysis tool AFNI.
机译:分析fMRI数据的主要目标之一是估计血液动力学响应函数(HRF),它是具有某种稀疏性的大尺寸参数向量。本文介绍了一种HRF的变维模型,并开发了新颖的正则化方法,通过结合稀疏特征从fMRI时间序列估计HRF。特别是,我们提出了三种类型的惩罚选择方法:套索,自适应套索和SCAD。仿真研究表明,就稀疏度恢复而言,正则化方法的优势优于常规的非正则化方法,后者将HRF限制为固定的低维,而没有捕获稀疏性结构。我们说明了使用真实的fMRI数据集估算HRF的正规化方法,并与流行的成像分析工具AFNI提供的结果进行了比较。

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