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基于Kendall改进的同步算法癫痫脑网络分析
引用本文:董泽芹,侯凤贞,戴加飞,刘新峰,李锦,王俊.基于Kendall改进的同步算法癫痫脑网络分析[J].物理学报,2014,63(20):208705-208705.
作者姓名:董泽芹  侯凤贞  戴加飞  刘新峰  李锦  王俊
作者单位:1. 南京邮电大学, 图像处理与图像通信江苏省重点实验室, 南京 210003;2. 中国药科大学理学院, 南京 210009;3. 南京军区南京总医院神经内科, 南京 210002;4. 陕西师范大学物理学与信息技术学院, 西安 710062
基金项目:国家自然科学基金(批准号:61271082,61201029,61102094);江苏省自然科学基金(批准号:BK2011759,BK2011565);南京军区南京总医院基金(批准号:2014019);中央高校基本科研业务费(批准号:FY2014LX0039)资助的课题~~
摘    要:提出了一种基于Kendall等级相关改进的同步算法IRC(inverse rank correlation).Kendall等级相关是非线性动力学分析的一般化算法,可有效地度量变量间的非线性相关性.复杂网络的研究已逐渐深入到社会科学的各个领域,脑网络的研究已经成为当今脑功能研究的热点.利用改进的IRC算法,基于脑电EEG(electroencephalogram)数据来构建大脑功能性网络.对构建的脑功能网络的度指标进行了分析,以调查癫痫脑功能网络是否异于正常人.结果显示:使用该改进的算法能够对癫痫和正常脑功能网络显著区分,且只需要记录很短的脑电数据.实验结果数据表明,该方法适用于区分癫痫和正常脑组织网络度指标,它可有助于进一步地加深对大脑的神经动力学行为的研究,并为临床诊断提供有效工具.

关 键 词:electroencephalogram  癫痫  Kendall等级相关  复杂网络
收稿时间:2014-06-29

An improved synchronous algorithm based on Kendall for analyzing epileptic brain network
Dong Ze-Qin,Hou Feng-Zhen,Dai Jia-Fei,Liu Xin-Feng,Li Jin,Wang Jun.An improved synchronous algorithm based on Kendall for analyzing epileptic brain network[J].Acta Physica Sinica,2014,63(20):208705-208705.
Authors:Dong Ze-Qin  Hou Feng-Zhen  Dai Jia-Fei  Liu Xin-Feng  Li Jin  Wang Jun
Abstract:In this study, we propose a kendall rank correlation based synchronous algorithm inverse rank correlation (IRC). The kendall rank correlation is a generalized algorithm of nonlinear dynamics analysis which can effectively measure nonlinear correlations between variables. The study of complex networks has gradually penetrated into various fields of the social sciences. We use our algorithm to construct functional brain networks based on the data from electroencephalogram (EEG). The average node degree of complex brain networks is analyzed to investigate whether epileptic functional brain networks are distinctly different from normal brain networks. Results show that our method can distinguish between epileptic and normal functional brain networks and needs to record a very small number of EEG data. Experimental data show that our method suited to distinguish between epilepsy and normal brain node degree, which may contribute to further deepening the study of the brain neural dynamic behaviors, and provide an effective tool for clinical diagnosis.
Keywords: electroencephalogram epileptic Kendall rank correlation complex network
Keywords:electroencephalogram  epileptic  Kendall rank correlation  complex network
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