通过贝叶斯连接改变点模型探索功能性脑动力学

Zhichao Lian, Xiang Li, Jianchuan Xing, Jinglei Lv, Xi Jiang, Dajiang Zhu, Shu Zhang, Jiansong Xu, M. Potenza, Tianming Liu, Jing Zhang
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引用次数: 17

摘要

最近的多项神经影像学研究表明,人类大脑的功能经历了显著的时间动态。然而,这种功能动力学的定量表征和建模很少被探索。为了填补这一空白,我们提出了一种新的贝叶斯连接变化点模型(BCCPM),该模型分析了不同时间段大脑网络节点之间的联合概率,并统计确定了时间块的边界来估计变化点。直观地说,确定的变化点代表了大脑网络中功能相互作用模式的转变,可以用来研究大脑的时间功能动力学。通过综合数据对BCCPM进行了评价和验证。此外,BCCPM已应用于一个真实的基于块设计任务的fMRI数据集,并获得了有趣的结果。
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Exploring functional brain dynamics via a Bayesian connectivity change point model
Multiple recent neuroimaging studies have demonstrated that the human brain's function undergoes remarkable temporal dynamics. However, quantitative characterization and modeling of such functional dynamics have been rarely explored. To fill this gap, we presents a novel Bayesian connectivity change point model (BCCPM), to analyze the joint probabilities among the nodes of brain networks between different time periods and statistically determine the boundaries of temporal blocks to estimate the change points. Intuitively, the determined change points represent the transitions of functional interaction patterns within the brain networks and can be used to investigate temporal functional brain dynamics. The BCCPM has been evaluated and validated by synthesized data. Also, the BCCPM has been applied to a real block-design task-based fMRI dataset and interesting results were obtained.
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