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A data quality metric in resting fMRI and functional connectivity in mTBI.

机译:静息功能磁共振成像和mTBI中功能连接的数据质量指标。

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摘要

This effort furthers resting state fMRI analysis in two different areas. The first area concerns improving a common data quality metric to be more consistent across hardware parameters. The second area deals with applying techniques to resting fMRI collected from collegiate athletes in search for an objective biomarker of concussion and recovery.;While data quality is always important for fMRI, systematic changes due to factors like head motion are particularly problematic in resting fMRI where they can directly affect measures of functional connectivity. DVARS is a commonly used data quality metric based on frame to frame signal changes. Differences in hardware characteristics can cause differences in observed DVARS values, which could adversely affect the number of time points censored using a given threshold. A normalized version of DVARS called nDVARS is presented and shown to help mitigate this concern.;The second part of this work examines fMRI data collected from concussed collegiate athletes. Data were collected at baseline and at three times after injury. After appropriate preprocessing, the data were converted into a single whole-brain connectivity matrix for each time point. These matrices were used in an attempt to predict a set of clinical measures in two different ways. Forward stepwise linear regression was used with the loading scores of the top principal components as possible predictor variables, but this approach failed. Correlations were observed for each component with each of the clinical measures, revealing a significant correlation between a single component and emotional contagion after Bonferroni correction.;Each connectivity matrix was also converted into a score representing its modularity. A t-test did not find a change in modularity due to concussion. Further tests found moderate correlations between modularity and two different measures, but these did not survive Bonferroni correction for multiple comparisons. A more liberal false discovery rate correction suggests that at least one of the moderate correlations may be a true positive, but this would need to be independently validated.
机译:这项工作进一步促进了两个不同区域的静息状态功能磁共振成像分析。第一个领域涉及提高通用数据质量指标,使其在硬件参数之间更加一致。第二个领域涉及将技术应用于从大学运动员那里收集的静息fMRI,以寻找客观的脑震荡和恢复生物标志物;虽然数据质量对于fMRI一直很重要,但由于头部运动等因素导致的系统变化在静息fMRI中尤其成问题它们可以直接影响功能连接的度量。 DVARS是基于帧到帧信号变化的常用数据质量度量。硬件特性的差异可能会导致观察到的DVARS值出现差异,这可能会对使用给定阈值检查的时间点数量产生不利影响。提出并展示了一个标准化的DVARS版本nDVARS,它可以减轻这种担忧。该工作的第二部分检查了从脑震荡的大学运动员那里收集的fMRI数据。在基线和受伤后三次收集数据。经过适当的预处理后,每个时间点的数据都将转换为单个全脑连接矩阵。这些矩阵用于尝试以两种不同方式预测一组临床指标。使用前向逐步线性回归,将最高主成分的负荷得分作为可能的预测变量,但这种方法失败了。观察到每个成分与每个临床指标之间的相关性,揭示了Bonferroni校正后单个成分与情绪感染之间的显着相关性。每个连通性矩阵也转换为代表其模块化的评分。 T检验未发现由于脑震荡而导致模块性发生变化。进一步的测试发现,模块性和两个不同的度量之间存在适度的相关性,但是对于多重比较,这些结果在Bonferroni校正中无法幸免。更为宽松的错误发现率校正表明,至少一个中等相关性可能是真实正值,但这需要独立验证。

著录项

  • 作者

    Kuplicki, Rayus.;

  • 作者单位

    The University of Tulsa.;

  • 授予单位 The University of Tulsa.;
  • 学科 Computer Science.;Biology Neuroscience.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 109 p.
  • 总页数 109
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:53:58

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