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Tractography-based priors for dynamic causal models

机译:基于因果关系的动态因果模型先验

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摘要

Functional integration in the brain rests on anatomical connectivity (the presence of axonal connections) and effective connectivity (the causal influences mediated by these connections). The deployment of anatomical connections provides important constraints on effective connectivity, but does not fully determine it, because synaptic connections can be expressed functionally in a dynamic and context-dependent fashion. Although it is generally assumed that anatomical connectivity data is important to guide the construction of neurobiologically realistic models of effective connectivity; the degree to which these models actually profit from anatomical constraints has not yet been formally investigated. Here, we use diffusion weighted imaging and probabilistic tractography to specify anatomically informed priors for dynamic causal models (DCMs) of fMRI data. We constructed 64 alternative DCMs, which embodied different mappings between the probability of an anatomical connection and the prior variance of the corresponding of effective connectivity, and fitted them to empirical fMRI data from 12 healthy subjects. Using Bayesian model selection, we show that the best model is one in which anatomical probability increases the prior variance of effective connectivity parameters in a nonlinear and monotonic (sigmoidal) fashion. This means that the higher the likelihood that a given connection exists anatomically, the larger one should set the prior variance of the corresponding coupling parameter; hence making it easier for the parameter to deviate from zero and represent a strong effective connection. To our knowledge, this study provides the first formal evidence that probabilistic knowledge of anatomical connectivity can improve models of functional integration.
机译:大脑中的功能整合取决于解剖学连接(轴突连接的存在)和有效连接(由这些连接介导的因果影响)。解剖连接的部署对有效的连接提供了重要的约束,但是并不能完全确定它,因为突触连接可以以动态且依赖于上下文的方式在功能上进行表达。尽管通常认为解剖学连通性数据对指导有效连通性的神经生物学现实模型的构建很重要;这些模型实际上从解剖学约束中获利的程度尚未进行正式研究。在这里,我们使用扩散加权成像和概率束摄影术来指定fMRI数据的动态因果模型(DCM)的解剖学依据。我们构建了64个替代DCM,这些DCM在解剖学连接的概率与有效连接的对应关系的先验差异之间体现了不同的映射关系,并将其与来自12位健康受试者的经验性fMRI数据拟合。使用贝叶斯模型选择,我们表明最佳模型是一种解剖概率以非线性和单调(S型)方式增加有效连通性参数的先验方差的模型。这意味着给定连接在解剖上存在的可能性越高,则应设置相应耦合参数的先验方差越大;因此,使参数更容易偏离零并表示牢固有效的连接。就我们所知,这项研究提供了第一个正式证据,即解剖学连通性的概率知识可以改善功能整合的模型。

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