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Investigating human audio-visual object perception with a combination of hypothesis-generating and hypothesis-testing fMRI analysis tools

机译:结合假设生成和假设检验功能磁共振成像分析工具研究人类视听对象感知

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摘要

Primate multisensory object perception involves distributed brain regions. To investigate the network character of these regions of the human brain, we applied data-driven group spatial independent component analysis (ICA) to a functional magnetic resonance imaging (fMRI) data set acquired during a passive audio-visual (AV) experiment with common object stimuli. We labeled three group-level independent component (IC) maps as auditory (A), visual (V), and AV, based on their spatial layouts and activation time courses. The overlap between these IC maps served as definition of a distributed network of multisensory candidate regions including superior temporal, ventral occipito-temporal, posterior parietal and prefrontal regions. During an independent second fMRI experiment, we explicitly tested their involvement in AV integration. Activations in nine out of these twelve regions met the max-criterion (A < AV > V) for multisensory integration. Comparison of this approach with a general linear model-based region-of-interest definition revealed its complementary value for multisensory neuroimaging. In conclusion, we estimated functional networks of uni- and multisensory functional connectivity from one dataset and validated their functional roles in an independent dataset. These findings demonstrate the particular value of ICA for multisensory neuroimaging research and using independent datasets to test hypotheses generated from a data-driven analysis.Electronic supplementary materialThe online version of this article (doi:10.1007/s00221-011-2669-0) contains supplementary material, which is available to authorized users.
机译:灵长类动物的多感觉物体感知涉及分布的大脑区域。为了研究人脑这些区域的网络特征,我们将数据驱动的组空间独立分量分析(ICA)应用于在被动视听(AV)实验中获得的功能性磁共振成像(fMRI)数据集,对象刺激。基于它们的空间布局和激活时间过程,我们将三个组级别的独立分量(IC)映射标记为听觉(A),视觉(V)和AV。这些IC图之间的重叠用作多感官候选区域的分布式网络的定义,所述候选区域包括颞上,腹枕颞,顶后壁和前额叶区域。在第二项独立的功能磁共振成像实验中,我们明确测试了它们参与AV整合的情况。这十二个区域中有九个区域的激活符合用于多感官整合的最大标准(A V)。将该方法与基于线性模型的常规兴趣区域定义进行比较,发现其对于多感觉神经成像的互补价值。总之,我们从一个数据集中估算了具有单感觉和多感觉功能连接的功能网络,并在一个独立的数据集中验证了它们的功能作用。这些发现证明了ICA在多感觉神经影像学研究中以及使用独立的数据集测试由数据驱动的分析产生的假设的特殊价值。电子补充材料本文的在线版本(doi:10.1007 / s00221-011-2669-0)包含补充内容资料,可供授权用户使用。

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