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Principal component analysis and assessment of language network activation patterns in pediatric epilepsy.

机译:小儿癫痫语言网络激活模式的主成分分析和评估。

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摘要

This dissertation establishes a novel data-driven method to identify language network activation patterns in pediatric epilepsy through the use of the Principal Component Analysis (PCA) on functional magnetic resonance imaging (fMRI). A total of 122 subjects' data sets from five different hospitals were included in the study through a web-based repository site designed here at FIU. Research was conducted to evaluate different classification and clustering techniques in identifying hidden activation patterns and their associations with meaningful clinical variables. The results were assessed through agreement analysis with the conventional methods of lateralization index (LI) and visual rating. What is unique in this approach is the new mechanism designed for projecting language network patterns in the PCA-based decisional space.;Synthetic activation maps were randomly generated from real data sets to uniquely establish nonlinear decision functions (NDF) which are then used to classify any new fMRI activation map into typical or atypical. The best nonlinear classifier was obtained on a 4D space with a complexity (nonlinearity) degree of 7. Based on the significant association of language dominance and intensities with the top eigenvectors of the PCA decisional space, a new algorithm was deployed to delineate primary cluster members without intensity normalization. In this case, three distinct activations patterns (groups) were identified (averaged kappa with rating 0.65, with LI 0.76) and were characterized by the regions of: (1) the left inferior frontal Gyrus (IFG) and left superior temporal gyrus (STG), considered typical for the language task; (2) the IFG, left mesial frontal lobe, right cerebellum regions, representing a variant left dominant pattern by higher activation; and (3) the right homologues of the first pattern in Broca's and Wernicke's language areas. Interestingly, group 2 was found to reflect a different language compensation mechanism than reorganization. Its high intensity activation suggests a possible remote effect on the right hemisphere focus on traditionally left-lateralized functions.;In retrospect, this data-driven method provides new insights into mechanisms for brain compensation/reorganization and neural plasticity in pediatric epilepsy.
机译:本论文建立了一种新的数据驱动方法,通过在功能磁共振成像(fMRI)上使用主成分分析(PCA)来识别小儿癫痫的语言网络激活模式。通过在FIU上设计的基于Web的存储库站点,来自五家不同医院的总共122个受试者的数据集被纳入研究。进行了研究以评估不同的分类和聚类技术,以识别隐藏的激活模式及其与有意义的临床变量的关联。通过使用侧化指数(LI)和视觉评级的常规方法进行一致性分析来评估结果。这种方法的独特之处在于为在基于PCA的决策空间中投影语言网络模式而设计的新机制。从真实数据集中随机生成合成激活图,以唯一地建立非线性决策函数(NDF),然后将其用于分类任何新的fMRI激活图都可分为典型或非典型。在复杂度(非线性)为7的4D空间上获得了最佳的非线性分类器。基于语言优势和强度与PCA决策空间的顶级特征向量之间的显着关联,采用了一种新算法来描绘主要聚类成员没有强度归一化。在这种情况下,确定了三个不同的激活模式(组)(平均kappa评分为0.65,LI为0.76),其特征在于以下区域:(1)左下额回(IFG)和左上颞回(STG) ),被认为是语言任务的典型代表; (2)IFG,左中叶额叶,右小脑区,通过较高的激活率表现出左优势模式的变异; (3)Broca和Wernicke语言地区的第一个模式的正确同源物。有趣的是,发现第2组反映的语言补偿机制不同于重组。它的高强度激活表明对右半球的传统远程偏侧功能可能产生遥远的影响。回想起来,这种数据驱动的方法为小儿癫痫的大脑补偿/重组和神经可塑性机制提供了新见解。

著录项

  • 作者

    You, Xiaozhen.;

  • 作者单位

    Florida International University.;

  • 授予单位 Florida International University.;
  • 学科 Engineering Biomedical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 133 p.
  • 总页数 133
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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