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首页> 外文期刊>NeuroImage >A stimulus-locked vector autoregressive model for slow event-related fMRI designs.
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A stimulus-locked vector autoregressive model for slow event-related fMRI designs.

机译:一种与慢事件相关的功能磁共振成像设计的刺激锁定矢量自回归模型。

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Neuroscientists have become increasingly interested in exploring dynamic relationships among brain regions. Such a relationship, when directed from one region toward another, is denoted by "effective connectivity." An fMRI experimental paradigm which is well-suited for examination of effective connectivity is the slow event-related design. This design presents stimuli at sufficient temporal spacing for determining within-trial trajectories of BOLD activation, allowing for the analysis of stimulus-locked temporal covariation of brain responses in multiple regions. This may be especially important for emotional stimuli processing, which can evolve over the course of several seconds, if not longer. However, while several methods have been devised for determining fMRI effective connectivity, few are adapted to event-related designs, which include nonstationary BOLD responses and multiple levels of nesting. We propose a model tailored for exploring effective connectivity of multiple brain regions in event-related fMRI designs--a semi-parametric adaptation of vector autoregressive (VAR) models, termed "stimulus-locked VAR" (SloVAR). Connectivity coefficients vary as a function of time relative to stimulus onset, are regularized via basis expansions, and vary randomly across subjects. SloVAR obtains flexible, data-driven estimates of effective connectivity and hence is useful for building connectivity models when prior information on dynamic regional relationships is sparse. Indices derived from the coefficient estimates can also be used to relate effective connectivity estimates to behavioral or clinical measures. We demonstrate the SloVAR model on a sample of clinically depressed and normal controls, showing that early but not late cortico-amygdala connectivity appears crucial to emotional control and early but not late cortico-cortico connectivity predicts depression severity in the depressed group, relationships that would have been missed in a more traditional VAR analysis.
机译:神经科学家对探索大脑区域之间的动态关系越来越感兴趣。当从一个区域指向另一区域时,这种关系由“有效连通性”表示。慢事件相关设计非常适合用于检查有效连通性的fMRI实验范例。该设计以足够的时间间隔呈现刺激,以确定BOLD激活的试验轨迹,从而可以分析多个区域的大脑反应的刺激锁定的时间协变。这对于情绪刺激处理可能尤其重要,情绪刺激处理可能会持续几秒甚至更长的时间。然而,尽管已经设计出几种确定fMRI有效连接性的方法,但很少有方法适合与事件相关的设计,包括非平稳BOLD响应和多层嵌套。我们提出了一种旨在探索与事件相关的功能磁共振成像设计中多个大脑区域的有效连通性的模型,该模型是矢量自回归(VAR)模型的半参数自适应,称为“刺激锁定VAR”(SloVAR)。连通性系数随时间的变化而变化,相对于刺激的发生,通过基础扩展而规则化,并且在受试者之间随机变化。 SloVAR获取有效连接的灵活的,数据驱动的估计,因此当关于动态区域关系的先前信息很少时,对于建立连接模型很有用。从系数估计值得出的指标也可以用于将有效的连通性估计值与行为或临床指标相关联。我们在临床上抑郁和正常对照的样本上证明了SloVAR模型,表明早期而非晚期皮质-杏仁核连通性对情绪控制至关重要,而早期而非晚期皮质-皮质连通性预测抑郁症组的抑郁严重程度,这种关系在更传统的VAR分析中被遗漏了。

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