Visual analytics of brain effective connectivity using convergent cross mapping

H. Natsukawa, K. Koyamada
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引用次数: 6

Abstract

To elucidate the dynamics of information processing in the brain, it is necessary to identify the direction of neural information transmission in the neuronal network and clarify the effects (i.e., the causal relationship) of neuronal activity in one area on neuronal activity in another area. Convergent cross mapping (CCM) has been employed in the neuroscience field to examine the effective connectivity of brain functions. CCM can detect causality from time series data created from deterministic and nonlinear systems. Because CCM includes complicated processes such as the determination of advance parameters, the confirmation of nonlinearity, and the interpretation of results, which results in a lowering of the usability of CCM, there is a strong need for an effective visual interface. In this paper, we propose a visual analytic system that increases the usability of CCM and contributes to new discoveries in effective connectivity. The usability was evaluated using a domain expert questionnaire. It was confirmed that the usability was improved by comparing the proposed system to the original character user interface from the viewpoint of the results and process comprehensibility. In addition, with the proposed system, new findings in human brain connectivity have been obtained from actual magnetoencephalography data during visual cognitive task and resting-state task.
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使用收敛交叉映射的大脑有效连接可视化分析
为了阐明大脑中信息加工的动态,有必要确定神经网络中神经信息传递的方向,阐明一个区域的神经元活动对另一个区域的神经元活动的影响(即因果关系)。收敛交叉映射(CCM)已被应用于神经科学领域来研究脑功能的有效连通性。CCM可以从确定性和非线性系统产生的时间序列数据中检测因果关系。由于CCM包含复杂的过程,如预先参数的确定、非线性的确认和结果的解释,这导致CCM的可用性降低,因此强烈需要一个有效的视觉界面。在本文中,我们提出了一个视觉分析系统,增加了CCM的可用性,并有助于有效连接的新发现。使用领域专家问卷对可用性进行评估。从结果和过程可理解性两方面与原汉字用户界面进行了比较,证实了系统的可用性得到了提高。此外,该系统还从视觉认知任务和静息状态任务的实际脑磁图数据中获得了人脑连通性的新发现。
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