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使用马尔可夫链蒙特卡罗方法的贝叶斯连接场建模。

Bayesian connective field modeling using a Markov Chain Monte Carlo approach.

作者信息

Invernizzi Azzurra, Haak Koen V, Carvalho Joana C, Renken Remco J, Cornelissen Frans W

机构信息

Laboratory for Experimental Ophthalmology, University of Groningen, University Medical Center Groningen, Groningen, the Netherlands; Cognitive Neuroscience Center, Department of Biomedical Sciences of Cells & Systems, University Medical Center Groningen, Groningen, the Netherlands; Department of Environmental Medicine and Public Health, Icahn School of Medicine at Mount Sinai, New York, NY, USA.

Donders Institute for Brain Cognition and Behaviour, Radboud University Medical Center, Nijmegen, the Netherlands.

出版信息

Neuroimage. 2022 Dec 1;264:119688. doi: 10.1016/j.neuroimage.2022.119688. Epub 2022 Oct 21.

Abstract

The majority of neurons in the human brain process signals from neurons elsewhere in the brain. Connective Field (CF) modelling is a biologically-grounded method to describe this essential aspect of the brain's circuitry. It allows characterizing the response of a population of neurons in terms of the activity in another part of the brain. CF modelling translates the concept of the receptive field (RF) into the domain of connectivity by assessing, at the voxel level, the spatial dependency between signals in distinct cortical visual field areas. Thus, the approach enables to characterize the functional cortical circuitry of the human cortex. While already very useful, the present CF modelling approach has some intrinsic limitations due to the fact that it only estimates the model's explained variance and not the probability distribution associated with the estimated parameters. If we could resolve this, CF modelling would lend itself much better for statistical comparisons at the level of single voxels and individuals. This is important when trying to gain a detailed understanding of the neurobiology and pathophysiology of the visual cortex, notably in rare cases. To enable this, we present a Bayesian approach to CF modeling (bCF). Using a Markov Chain Monte Carlo (MCMC) procedure, it estimates the posterior probability distribution underlying the CF parameters. Based on this, bCF quantifies, at the voxel level, the uncertainty associated with each parameter estimate. This information can be used in various ways to increase confidence in the CF model predictions. We applied bCF to BOLD responses recorded in the early human visual cortex using 3T fMRI. We estimated both the CF parameters and their associated uncertainties and show they are only weakly correlated. Moreover, we show how bCF facilitates the use of effect size (beta) as a data-driven parameter that can be used to select the most reliable voxels for further analysis. Finally, to further illustrate the functionality gained by bCF, we apply it to perform a voxel-level comparison of a single, circular symmetric, Gaussian versus a Difference-of-Gaussian model. We conclude that our bCF framework provides a comprehensive tool to study human functional cortical circuitry in health and disease.

摘要

人类大脑中的大多数神经元处理来自大脑其他部位神经元的信号。连接场(CF)建模是一种基于生物学的方法,用于描述大脑回路的这一重要方面。它允许根据大脑另一部分的活动来表征一群神经元的反应。CF建模通过在体素水平评估不同皮质视觉区域信号之间的空间依赖性,将感受野(RF)的概念转化为连接性领域。因此,该方法能够表征人类皮质的功能皮质回路。虽然目前的CF建模方法已经非常有用,但由于它只估计模型的解释方差,而不是与估计参数相关的概率分布,所以存在一些内在局限性。如果我们能够解决这个问题,CF建模将更适合在单个体素和个体水平上进行统计比较。在试图详细了解视觉皮质的神经生物学和病理生理学,尤其是在罕见病例中时,这一点很重要。为了实现这一点,我们提出了一种用于CF建模的贝叶斯方法(bCF)。使用马尔可夫链蒙特卡罗(MCMC)程序,它估计CF参数背后的后验概率分布。基于此,bCF在体素水平上量化与每个参数估计相关的不确定性。这些信息可以以各种方式用于增加对CF模型预测的信心。我们将bCF应用于使用3T功能磁共振成像(fMRI)记录的早期人类视觉皮质中的血氧水平依赖(BOLD)反应。我们估计了CF参数及其相关的不确定性,并表明它们之间只有微弱的相关性。此外,我们展示了bCF如何促进将效应大小(β)用作数据驱动参数,该参数可用于选择最可靠的体素进行进一步分析。最后,为了进一步说明bCF获得的功能,我们将其应用于对单个圆对称高斯模型与高斯差分模型进行体素水平比较。我们得出结论,我们的bCF框架提供了一个全面的工具,用于研究健康和疾病状态下的人类功能皮质回路。

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