IEEE Trans Med Imaging. 2015 May;34(5):1155-63. doi: 10.1109/TMI.2014.2379914. Epub 2014 Dec 12.
Functional magnetic resonance imaging (fMRI) is an indirect measure of neural activity which is modeled as a convolution of the latent neuronal response and the hemodynamic response function (HRF). Since the sources of HRF variability can be nonneural in nature, the measured fMRI signal does not faithfully represent underlying neural activity. Therefore, it is advantageous to deconvolve the HRF from the fMRI signal. However, since both latent neural activity and the voxel-specific HRF is unknown, the deconvolution must be blind. Existing blind deconvolution approaches employ highly parameterized models, and it is unclear whether these models have an over fitting problem. In order to address these issues, we 1) present a nonparametric deconvolution method based on homomorphic filtering to obtain the latent neuronal response from the fMRI signal and, 2) compare our approach to the best performing existing parametric model based on the estimation of the biophysical hemodynamic model using the Cubature Kalman Filter/Smoother. We hypothesized that if the results from nonparametric deconvolution closely resembled that obtained from parametric deconvolution, then the problem of over fitting during estimation in highly parameterized deconvolution models of fMRI could possibly be over stated. Both simulations and experimental results demonstrate support for our hypothesis since the estimated latent neural response from both parametric and nonparametric methods were highly correlated in the visual cortex. Further, simulations showed that both methods were effective in recovering the simulated ground truth of the latent neural response.
功能磁共振成像 (fMRI) 是对神经活动的间接测量,它被建模为潜在神经元响应和血液动力学响应函数 (HRF) 的卷积。由于 HRF 可变性的来源可能是非神经性质的,因此测量的 fMRI 信号不能忠实地表示潜在的神经活动。因此,从 fMRI 信号中去卷积 HRF 是有利的。然而,由于潜在的神经活动和体素特异性 HRF 是未知的,因此去卷积必须是盲的。现有的盲去卷积方法采用高度参数化的模型,尚不清楚这些模型是否存在过度拟合问题。为了解决这些问题,我们 1)提出了一种基于同态滤波的非参数去卷积方法,从 fMRI 信号中获得潜在的神经元响应,2)基于 Cubature Kalman Filter/Smoother 对生物物理血液动力学模型的估计,将我们的方法与表现最好的现有参数模型进行比较。我们假设,如果非参数去卷积的结果与参数去卷积的结果非常相似,那么在 fMRI 的高度参数化去卷积模型中进行估计时的过拟合问题可能被夸大了。模拟和实验结果都支持我们的假设,因为在视觉皮层中,来自参数和非参数方法的估计的潜在神经元响应高度相关。此外,模拟表明这两种方法都能有效地恢复潜在神经元响应的模拟真实值。