首页> 外文期刊>International journal of psychophysiology: official journal of the International Organization of Psychophysiology >Classification of mild cognitive impairment EEG using combined recurrence and cross recurrence quantification analysis
【24h】

Classification of mild cognitive impairment EEG using combined recurrence and cross recurrence quantification analysis

机译:使用组合复发和交叉复发量化分析对轻度认知障碍脑电图分类

获取原文
获取原文并翻译 | 示例
           

摘要

Abstract The present study is aimed at the classification of mild cognitive impairment (MCI) EEG by combining complexity and synchronization features based on quantifiers from the common platform of recurrence based analysis. Recurrence rate (RR) of recurrence quantification analysis (RQA) is used for complexity analysis and RR of cross recurrence quantification analysis (CRQA) is used for synchronization analysis. The investigations are carried out on EEG from two states (i) resting eyes closed (EC) and (ii) short term memory task (STM).The results of our analysis show lower levels of complexity and higher levels of inter and intra hemispheric synchronisation in the MCI EEG compared to that of normal controls (NC) as indicated by the statistically significant higher value of RQA RR and CRQA RR. The results also evidence the effectiveness of memory activation task by bringing out the characteristic features of MCI EEG in task specific regions of temporal, parietal and frontal lobes under the STM condition.A new approach of combining complexity and synchronization features for EEG classification of MCI subjects is proposed, based on the geometrical signal separation in a feature space formed by RQA and CRQA RR values. The results of linear classification analysis of MCI and NC EEG also reveals the effectiveness of task state analysis by the enhanced classification efficiency under the cognitive load of STM condition compared to that of EC condition. Highlights ? A new approach of using complexity and synchronization features jointly for the classification of MCI EEG is proposed. ? Lowered complexity and increased synchronization are observed in EEG of MCI compared to normal controls (NC). ? RQA and CRQA measures are combined to form a feature space for geometrical separation of MCI and NC EEG. ? MCI group is differentiated from NC group using support vector machine (SVM) in the proposed feature space. ? A better classification is obtained under short term memory task condition (STM) compared to eyes closed (EC) condition.
机译:摘要本研究旨在通过基于复发分析的公共平台组合基于量子的复杂性和同步特征来分类轻度认知障碍(MCI)EEG。复发定量分析(RQA)的复发率(RR)用于复杂性分析和交叉复发定量分析(CRQA)的RR用于同步分析。调查在两种州(I)休息(I)闭着眼睛(EC)和(ii)短期记忆任务(STM)上进行调查。我们的分析结果显示较低水平的复杂性和较高水平的互联性和内部半球同步与正常对照(NC)相比,MCI EEG相比,RQA RR和CRQA RR的统计学上显着的较高值所示。结果还证明了内存激活任务的有效性通过在STM条件下的任务特定区域中的任务特定区域中的MCI EEG的特征来证明了内存激活任务。结合复杂性和同步特征的新方法,用于MCI科目的脑电图分类基于由RQA和CRQA RR值形成的特征空间中的几何信号分离提出。与EC条件相比,MCI和NC EEG的线性分类分析的结果还揭示了通过增强的分类效率的任务状态分析的有效性与EC条件相比,STM条件的认知负荷。强调 ?提出了一种使用复杂性和同步特征的新方法,共同用于MCI EEG分类。还与正常对照(NC)相比,在MCI的EEG中观察到降低复杂性和同步增加。还将RQA和CRQA测量组合以形成MCI和NC EEG的几何分离的特征空间。还MCI组在所提出的特征空间中使用支持向量机(SVM)与NC组不同。还与眼睛关闭(EC)条件相比,在短期内存任务条件(STM)下获得更好的分类。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号