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A data-driven spatially adaptive sparse generalized linear model for functional MRI analysis

机译:用于功能MRI分析的数据驱动的空间自适应稀疏广义线性模型

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A novel data-driven sparse generalized linear model (GLM) and statistical analysis method for fMRI is developed. Although independent component analysis (ICA) has been broadly applied to fMRI to separate spatially or temporally independent components, recent studies show that ICA does not guarantee independence of simultaneously occurred distinct activity patterns in the brain and sparsity of the signal has been shown to be more important. Motivated from the ICA and biological findings such as sparse coding in the primary visual cortex simple cells, we propose a compressed sensing based data-driven sparse GLM solely based upon the sparsity of the signal. It enables estimation of spatially adaptive design matrix from sparse signal components that represent synchronous neural hemodynamics. Furthermore, an MDL based model order selection rule can determine unknown sparsity for sparse dictionary learning.
机译:开发了一种新颖的数据驱动的稀疏广义线性模型(GLM)和fMRI的统计分析方法。尽管独立成分分析(ICA)已广泛应用于fMRI,以分离空间或时间上独立的成分,但最近的研究表明ICA不能保证大脑中同时发生的不同活动模式的独立性,并且信号稀疏性也更高。重要的。从ICA和生物学发现(例如在主要视觉皮层简单细胞中进行稀疏编码)的动机出发,我们提出仅基于信号稀疏性的基于压缩感知的数据驱动的稀疏GLM。它使能够根据表示同步神经血液动力学的稀疏信号分量来估计空间适应性设计矩阵。此外,基于MDL的模型顺序选择规则可以确定稀疏字典学习的未知稀疏性。

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