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General linear model for fMRI time series data: Model formulation, covariance estimation, and model selection.

机译:fMRI时间序列数据的通用线性模型:模型制定,协方差估计和模型选择。

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摘要

Functional magnetic resonance imaging (fMRI) is a relatively new non-invasive technique that is used to study human brain function. However, fMRI time series contains a number of sources of variability, including uncorrelated noise, correlated noise, and a signal is a temporally blurred and delayed version of changes in neural activity. The accuracy of statistical method will depend on the way in which these factors are accounted for in a model. In this proposal, we address issues of model formulation, covariance estimation, and model selection in linear regression model of fMRI data.;Firstly, we use model diagnosis and exploratory data analysis to help detecting artifacts in the data and building a better mean structure model. In this work, we have developed a general framework for diagnosis of linear models fit to fMRI data. Using model and scan summaries and dynamic linked viewers, we have shown how to swiftly localize rare anomalies and artifacts in large 4D datasets.;Secondly, to address the intrinsic correlation in the fMRI time series data, we propose a sandwich estimator to get robust and consistent inferences for hypothesis testing. Generally speaking, the proposed GEE approach with sandwich estimation of variance has superior performance to the currently used approaches in both the simulation studies and real data analysis.;Lastly, several important model selection criteria which may be sensitive to the correlation model in fMRI data are collected and investigated. Although there is no single criterion optimal for all the purposes of our study, we demonstrate how these selection criteria can be applied in different aspects of correlation modeling in fMRI data analysis. Furthermore, the combined use of model diagnosis and model selection provides more information about the modeling of fMRI time series data and indicates possible resolution to the possible artifacts in the data.
机译:功能磁共振成像(fMRI)是用于研究人脑功能的一种相对较新的非侵入性技术。但是,fMRI时间序列包含许多可变性来源,包括不相关的噪声,相关的噪声,并且信号是神经活动变化的时间模糊和延迟版本。统计方法的准确性将取决于在模型中考虑这些因素的方式。在这项提议中,我们解决了fMRI数据的线性回归模型中的模型制定,协方差估计和模型选择等问题;首先,我们使用模型诊断和探索性数据分析来帮助检测数据中的伪像并建立更好的均值结构模型。在这项工作中,我们已经开发了诊断适合fMRI数据的线性模型的通用框架。使用模型和扫描摘要以及动态链接的查看器,我们展示了如何快速定位大型4D数据集中的稀有异常和伪影。其次,为了解决fMRI时间序列数据中的内在相关性,我们提出了一种三明治估计器,以使鲁棒性和稳定性得到提高。假设检验的一致推论。一般而言,在仿真研究和实际数据分析中,提出的具有方差三明治估计的GEE方法在性能上均优于当前使用的方法。最后,一些可能对fMRI数据中的相关模型敏感的重要模型选择标准是:收集并调查。尽管没有一个最佳标准可以满足我们所有研究目的,但我们证明了这些选择标准可以如何应用于fMRI数据分析中相关建模的不同方面。此外,模型诊断和模型选择的组合使用可提供有关fMRI时间序列数据建模的更多信息,并指示对数据中可能的伪像的可能解决方案。

著录项

  • 作者

    Luo, Wen-Lin.;

  • 作者单位

    University of Michigan.;

  • 授予单位 University of Michigan.;
  • 学科 Biostatistics.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 152 p.
  • 总页数 152
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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