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Graph theoretical connectivity analysis of the human brain while listening to music with emotional attachment: Feasibility study

机译:在听有情感依恋的音乐时,人脑的理论连接性分析图:可行性研究

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Benefits of listening to music with emotional attachment while recovering from a cerebral ischemic event have been reported. To develop a better understanding of the effects of music listening on the human brain, an algorithm for the graph-theoretical analysis of functional magnetic resonance imaging (fMRI) data was developed. From BOLD data of two paradigms (block-design, first piece: music without emotional attachment, additional visual guidance by a moving cursor in the score sheet; second piece: music with emotional attachment), network graphs were constructed with correlations between signal time courses as edge weights. Functional subunits in these graphs were identified with the MCODE clustering algorithm and mapped back into anatomical space using AFNI. Emotional centers including the right amygdala and bilateral insula were activated by the second piece (emotional attachment) but not by the first piece. Network clustering analysis revealed two separate networks of small-world property corresponding to task-oriented and resting state conditions, respectively. Functional subunits with highest interactions were bilateral precuneus for the first piece and left middle frontal gyrus and right amygdala, bilateral insula, left middle temporal gyrus for the second piece. Our results indicate that fMRI in connection with graph theoretical network analysis is capable of identifying and differentiating functional subunits in the human brain when listening to music with and without emotional attachment.
机译:据报道,从脑缺血事件中恢复时聆听带有情感依恋的音乐的好处。为了更好地理解音乐在人脑上的聆听效果,开发了一种用于功能磁共振成像(fMRI)数据的图论分析的算法。从两个范例的粗体数据(块设计,第一部分:没有情感依附的音乐,在计分表中通过移动的光标提供额外的视觉指导;第二部分:具有情感依附的音乐),构建了信号时间过程之间具有相关性的网络图作为边缘权重。使用MCODE聚类算法识别这些图中的功能亚基,并使用AFNI将其映射回解剖空间。第二部分(情绪依附)激活包括右杏仁核和双侧岛突在内的情绪中心,但第一部分则未激活。网络聚类分析揭示了两个独立的小世界属性网络,分别对应于面向任务和静止状态条件。相互作用最高的功能亚基是第一部分的双侧足突,左中额额回和右杏仁核,双侧岛,左中颞回。我们的研究结果表明,与图论网络分析相结合的功能磁共振成像技术能够在听音乐时带有或不带有情感依附的情况下,识别和区分人脑中的功能亚基。

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