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Support vector classification analysis of resting state functional connectivity fMRI.

机译:静止状态功能连接功能磁共振成像的支持向量分类分析。

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摘要

Since its discovery in 1995 resting state functional connectivity derived from functional MRI data has become a popular neuroimaging method for study psychiatric disorders. Current methods for analyzing resting state functional connectivity in disease involve thousands of univariate tests, and the specification of regions of interests to employ in the analysis. There are several drawbacks to these methods. First the mass univariate tests employed are insensitive to the information present in distributed networks of functional connectivity. Second, the null hypothesis testing employed to select functional connectivity differences between groups does not evaluate the predictive power of identified functional connectivities. Third, the specification of regions of interests is confounded by experimentor bias in terms of which regions should be modeled and experimental error in terms of the size and location of these regions of interests. The objective of this dissertation is to improve the methods for functional connectivity analysis using multivariate predictive modeling, feature selection, and whole brain parcellation. A method of applying Support vector classification (SVC) to resting state functional connectivity data was developed in the context of a neuroimaging study of depression. The interpretability of the obtained classifier was optimized using feature selection techniques that incorporate reliability information. The problem of selecting regions of interests for whole brain functional connectivity analysis was addressed by clustering whole brain functional connectivity data to parcellate the brain into contiguous functionally homogenous regions. This newly developed framework was applied to derive a classifier capable of correctly separating the functional connectivity patterns of patients with depression from those of healthy controls.
机译:自1995年发现静息状态功能连接以来,从功能性MRI数据中得出的功能连接已成为研究精神疾病的一种流行的神经影像学方法。用于分析疾病中静止状态功能连通性的当前方法涉及成千上万的单变量测试,以及用于分析的目标区域的规范。这些方法有几个缺点。首先,采用的质量单变量测试对功能连接的分布式网络中存在的信息不敏感。其次,用于选择组之间功能连接差异的零假设检验不能评估已识别功能连接的预测能力。第三,感兴趣区域的规范受实验者的偏见所困扰,后者在应该建模的区域方面以及在对这些感兴趣区域的大小和位置方面均存在实验误差。本文的目的是通过多变量预测建模,特征选择和全脑分割来改进功能连通性分析的方法。在抑郁症的神经影像学研究中,开发了一种将支持向量分类(SVC)应用于静止状态功能连接性数据的方法。使用包含可靠性信息的特征选择技术优化了获得的分类器的可解释性。通过将全脑功能连接数据聚类以将大脑分成连续的功能同质区域,可以解决为全脑功能连接分析选择感兴趣区域的问题。这个新开发的框架被应用到一个分类器中,该分类器能够正确地将抑郁症患者的功能连接模式与健康对照组的功能连接模式区分开。

著录项

  • 作者

    Craddock, Richard Cameron.;

  • 作者单位

    Georgia Institute of Technology.;

  • 授予单位 Georgia Institute of Technology.;
  • 学科 Engineering Biomedical.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 90 p.
  • 总页数 90
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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