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Multivariate Identification of Functional Neural Networks Underpinning Humorous Movie Viewing

机译:功能神经网络的多元识别静物电影观察

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While univariate functional magnetic resonance imaging (fMRI) data analysis methods have been utilized successfully to map brain areas associated with cognitive and emotional functions during viewing of naturalistic stimuli such as movies, multivariate methods might provide the means to study how brain structures act in concert as networks during free viewing of movie clips. Here, to achieve this, we generalized the partial least squares (PLS) analysis, based on correlations between voxels, experimental conditions, and behavioral measures, to identify large-scale neuronal networks activated during the first time and repeated watching of three ~5-min comedy clips. We identified networks that were similarly activated across subjects during free viewing of the movies, including the ones associated with self-rated experienced humorousness that were composed of the frontal, parietal, and temporal areas acting in concert. In conclusion, the PLS method seems to be well suited for the joint analysis of multi-subject neuroimaging and behavioral data to quantify a functionally relevant brain network activity without the need for explicit temporal models.
机译:虽然单变量函数磁共振成像(FMRI)数据分析方法已经成功地利用了与认知和情感功能相关的脑区,但在观看电影之类的自然刺激期间,多变量方法可能提供研究脑结构如何与音乐会起作用的手段网络在免费查看电影剪辑期间。为了实现这一点,我们通过体素,实验条件和行为措施之间的相关性来概括部分最小二乘(PLS)分析,以识别在第一次激活的大规模神经元网络,并重复观察三〜5-闵喜剧剪辑。我们确定在免费查看电影期间在跨对象中激活的网络,包括与自称有关的幽默有关的,这些幽默性由正面,顶视和颞会区域组成。总之,PLS方法似乎非常适用于多主题神经影像和行为数据的联合分析,以量化功能相关的大脑网络活动,而无需明确的时间模型。

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