Estimating Static and Dynamic Brain Networks by Kulback-Leibler Divergence from fMRI Data

Gonul Gunal Degirmendereli, F. Yarman-Vural
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Abstract

Representing brain activities by networks is very crucial to understand various cognitive states. This study proposes a novel method to estimate static and dynamic brain networks using Kulback-Leibler divergence. The suggested brain networks are based on the probability distributions of voxel intensity values measured by functional Magnetic Resonance Images (fMRI) recorded while the subjects perform a predefined cognitive task, called complex problem solving. We investigate the validity of the estimated brain networks by modeling and analyzing the different phases of complex problem solving process of human brain, namely planning and execution phases. The suggested computational network model is tested by a classification schema using Support Vector Machines. We observe that the network models can successfully discriminate the planning and execution phases of complex problem solving process with more than 90% accuracy, when the estimated dynamic networks, extracted from the fMRI data, are classified by Support Vector Machines.
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基于fMRI数据的Kulback-Leibler散度估计静态和动态脑网络
通过网络表征大脑活动对于理解各种认知状态至关重要。本研究提出了一种利用Kulback-Leibler散度估计静态和动态脑网络的新方法。当受试者执行预先设定的认知任务(称为复杂问题解决)时,功能磁共振成像(fMRI)记录了体素强度值的概率分布,并据此提出了大脑网络。我们通过建模和分析人脑复杂问题解决过程的不同阶段,即计划和执行阶段,来研究估计的脑网络的有效性。利用支持向量机的分类模式对提出的计算网络模型进行了验证。我们观察到,当从fMRI数据中提取估计的动态网络并使用支持向量机进行分类时,网络模型能够成功区分复杂问题解决过程的计划和执行阶段,准确率超过90%。
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