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Path analysis of the visual attention network using fMRI data.

机译:使用fMRI数据对视觉注意力网络进行路径分析。

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摘要

The ultimate goal for brain functional connectivity study is to propose, test, modify, and compare certain directional brain pathways. Path analysis or structural equation modeling (SEM) is the ideal statistical method for such studies. In this work, we propose a two-stage multivariate autoregressive path analysis/general linear model (MAR-SEM/GLM) approach for the analysis of multi-subject, multivariate time series functional magnetic resonance imaging (fMRI) data with subject level covariates. We also compare this new approach to several existing (and inferior) SEM methods for fMRI data analysis using the visual attention study conducted at the Brookhaven National Laboratory as an example.;In 1890 Roy and Sherrington's paper 'On the regulation of blood supply of the brain' suggested that neural activity was accompanied by a regional increase in cerebral blood flow. Until the advent of fMRI in the 1990's by Ogawa and Lee at the AT&T Bell Laboratories, however, there was no way of non-invasively measuring the flow of blood, and thus the brain functional level, in the cortical areas. Since then fMRI has become an increasingly important tool for the measurement of brain functional activities and brain functional connectivities.;During a fMRI study, each subject's brain functional activity level data are being measured longitudinally and usually more than one brain regions are of interest in each study. Thus for each subject, one obtains a multivariate time series of data from the fMRI experiment. Furthermore, as with most biomedical studies, a group of subjects are usually studied in order to obtain meaningful estimation for the population of interest. Therefore, one would usually acquire a multisubject multivariate times series data set from each fMRI study.;Furthermore, virtually all imaging studies have subject level covariates such as age, gender, education, and measurements of motor, behavioral, and/or cognitive functions using common tests such as the Stroop test for cognitive and Romberg test for motor functions plus various custom-designed self-evaluations forms for behavioral measurements. It is essential to incorporate these "external measurements" or covariates in the path analysis in order to determine the functional relationships between changes in certain brain functional pathways and changes in subjects' cognitive, behavioral and motor functions. (Abstract shortened by UMI.).
机译:大脑功能连接性研究的最终目标是提出,测试,修改和比较某些定向大脑通路。路径分析或结构方程模型(SEM)是进行此类研究的理想统计方法。在这项工作中,我们提出了一个两阶段的多元自回归路径分析/一般线性模型(MAR-SEM / GLM)方法,用于分析具有受试者水平协变量的多主体,多元时间序列功能磁共振成像(fMRI)数据。我们还将这种新方法与几种现有的(和劣等)SEM方法进行功能磁共振成像数据分析进行比较,以布鲁克海文国家实验室进行的视觉注意研究为例。; 1890年Roy和Sherrington的论文``关于调节血液供应的研究“大脑”提示神经活动伴随着脑血流量的局部增加。但是,直到1990年代AT&T贝尔实验室的Ogawa和Lee在fMRI出现之前,还没有办法非侵入性地测量皮层区域的血流量,从而测量大脑的功能水平。从那时起,功能磁共振成像已成为测量大脑功能活动和大脑功能连接性的越来越重要的工具。;在功能磁共振成像研究期间,纵向测量了每个受试者的大脑功能活动水平数据,通常每个领域都涉及多个大脑区域研究。因此,对于每个受试者,可以从fMRI实验中获得多元时间序列的数据。此外,与大多数生物医学研究一样,通常要对一组受试者进行研究,以获得对感兴趣人群的有意义的估计。因此,通常会从每个fMRI研究中获取多对象多元时间序列数据集。此外,几乎所有影像学研究都具有受试者水平的协变量,例如年龄,性别,教育程度以及运动能力,行为和/或认知功能的测量值,使用常见的测试,例如用于认知功能的Stroop测试和用于运动功能的Romberg测试,以及用于行为测量的各种定制设计的自我评估表格。必须将这些“外部测量”或协变量纳入路径分析,以确定某些大脑功能途径的变化与受试者的认知,行为和运动功能的变化之间的功能关系。 (摘要由UMI缩短。)。

著录项

  • 作者

    Kim, Jieun.;

  • 作者单位

    State University of New York at Stony Brook.;

  • 授予单位 State University of New York at Stony Brook.;
  • 学科 Biology Biostatistics.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 105 p.
  • 总页数 105
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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