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基于t-SNE的脑网络状态观测矩阵降维方法研究 被引量:19

Dimension reduction method research of brain network status observation matrix based on t-SNE
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摘要 针对基于功能核磁共振重构的脑网络状态观测矩阵维数过高和无特征的特点,对其降维方法展开研究,给出了基于t-SNE的脑网络状态观测矩阵降维算法,并且利用Python实现了降维及可视化平台。实验结果表明,与目前主流的其他降维算法相比较,使用该方法得到的脑网络状态观测矩阵低维空间的映射点有明显的聚类表现,并且在多个样本上的降维结果显现出一定的规律性,从而证明了该算法的有效性和普适性。 The brain network state observation matrix based on f MRI reconstruction technology is in high dimension and characterless. A dimension reduction method based on t-distributed Stochastic Neighbor Embedding algorithm for this kind of matrix is presented and a platform for the dimension reduction and visualization is built with Python. The experimental results show that compared with popular dimension reduction methods, the low dimension embedding of brain network state observation matrix with this method demonstrates distinct clustering, and the dimension reduction results of different brain network state observation matrix show up some common regularity, which supports the validity and universality of this method.
出处 《计算机工程与应用》 CSCD 北大核心 2018年第1期42-47,共6页 Computer Engineering and Applications
基金 国家自然科学基金(No.61263017)
关键词 高维数据降维 脑功能网络 脑网络状态观测矩阵 t-SNE算法 high dimension reduction functional brain network brain network state observation matrix t-SNE algorithm
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  • 1Cammoun L, Gigandet X, Sporns O, et al. Connectome alterations in schizophrenia. Neurolmage, 2009, 47:S157.
  • 2Vaessen M J, Jansen J F, Hofman P A, et al. Impaired small-world structural brain networks in chronic epilepsy. Neurolmage, 2009, 47: S113.
  • 3Friston K J, Frith C D, Liddle P F, et al. Functional connectivity: The principal component analysis of large (PET) data sets. J Cereb Blood Flow Metab, 1993, 13:5-14.
  • 4Stam C J. From synchronization to networks: Assessment of functional connectivity in the brain. In: Perez Velazquez J L, Richard W, eds. Coordinated Activity in the Brain, vol 2. Berlin Heidelberg: Springer-Verlag, 2009.91-115.
  • 5Stephan, Hilgetag K E, Burns C C, et al. Computational analysis of functional connectivity between areas of primate cerebral cortex. Philos Trans R Soc Lond B Biol Sci, 2000, 355:111-126.
  • 6Micheloyannis S, Pachou S, Stam C J, et al. Using graph theoretical analysis of multi channel EEG to evaluate the neural efficiency hypothesis. Neurosci Lett, 2006, 402:273-277.
  • 7Micheloyannis S, Vourkas S, Tsirka M, et al. The influence of ageing on complex brain networks: A graph theoretical analysis. Hum Brain Mapp, 2009, 30:200-208.
  • 8Ferri R, Rundo F, Bruni O, et al. Small-world network organization of functional connectivity of EEG slow-wave activity during sleep. Clin Neurophysiol, 2007, 118:449-456.
  • 9Dimitriadis S I, Laskaris N A, Del Rio-Portilla Y, et al. Characterizing dynamic functional connectivity across sleep stages from EEG. Brain Topogr, 2009, 22:119-133.
  • 10Stam C J. Functional connectivity patterns of human magnetoencephalographic recordings: A 'small-world' network? Neurosci Lett, 2004, 355:25-28.

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