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A Gaussian Dynamic Convolution Models of the FMRI BOLD Response

机译:FMRI BOLD响应的高斯动态卷积模型

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Blood oxygenation level dependent (BOLD) contrast based functional magnetic resonance imaging (fMRI) has been widely utilized to detect brain neural activities and great efforts are now stressed on the hemodynamic processes of different brain regions activated by a stimulus. The focus of this paper is Gaussian dynamic convolution models of the fMRI BOLD response. The convolutions are between the perfusion function of the neural response to a stimulus and a Gaussian function. The parameters of the models are estimated by a nonlinear least-squares optimal algorithm for the fMRI data of eight subjects collected in a visual stimulus experiment. The results show that the Gaussian model is better in fitting the data.
机译:基于血液氧合水平依赖性(BOLD)造影剂的功能磁共振成像(fMRI)已被广泛用于检测脑神经活动,现在人们对通过刺激激活的不同大脑区域的血液动力学过程进行了巨大努力。本文的重点是fMRI BOLD响应的高斯动态卷积模型。卷积在刺激神经反应的灌注函数和高斯函数之间。该模型的参数是通过非线性最小二乘最优算法针对视觉刺激实验中收集的八名受试者的fMRI数据估算的。结果表明,高斯模型在拟合数据方面更好。

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