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Characterizing the Effects of MR Image Quality Metrics on Intrinsic Connectivity Brain Networks: A Multivariate Approach

机译:表征MR图像质量度量标准对内在连接性大脑网络的影响:多变量方法

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摘要

Motion-induced artifact detection has become a fixture in the assessment of functional magnetic resonance imaging (fMRI) quality control. However, the effects of other MR image quality (IQ) metrics on intrinsic connectivity brain networks are largely unexplored. Accordingly, we report herein the initial assessment of the effects of a comprehensive list of IQ metrics on resting state networks using a multivariate analysis of covariance (MANCOVA) approach based on high-order spatial independent component analysis (ICA). Three categories of MR IQ metrics were considered: (1) metrics for artifacts including the AFNI outlier ratio and quality index, framewise displacement, and ghost to signal ratio, (2) metrics for the temporal quality of MRI data including the temporal framewise change in global BOLD signals (DVARS), global correlation of time-series, and temporal signal to noise ratio, (3) metrics for the structural quality of MRI data including the entropy focus criterion, foreground-background energy ratio, full-width half maximum smoothness, and static signal to noise ratio. After FDR-correction for multiple comparisons, results showed significant effects of the static and temporal signal to noise ratios on the spatial map intensities of the basal ganglia, default-mode and cerebellar networks. AFNI outlier ratio, framewise displacement and DVARS exhibited significant effects on the BOLD power spectra of sensorimotor networks. The global correlation of time-series displayed wide-spread modulation of the spectral power in most networks. Further investigations of the effect of IQ metrics on the characteristics of intrinsic connectivity brain networks allow more accurate interpretation of the fMRI results.
机译:运动诱发的伪像检测已成为功能磁共振成像(fMRI)质量控制评估的固定装置。但是,其他MR图像质量(IQ)指标对内在连通性大脑网络的影响在很大程度上尚待探索。因此,我们在此报告基于高阶空间独立分量分析(ICA)的多变量协方差分析(MANCOVA)方法对IQ指标综合列表对静止状态网络的影响进行了初步评估。考虑了三类MR IQ度量:(1)伪影的度量,包括AFNI离群率和质量指数,帧位移和重影信噪比;(2)MRI数据的时间质量的度量,包括时空帧的时间变化。全局BOLD信号(DVARS),时间序列的全局相关性和时间信噪比,(3)MRI数据结构质量的指标,包括熵聚焦标准,前景与背景能量之比,全角半最大平滑度,以及静态信噪比。经过FDR校正以进行多次比较后,结果显示静态和时间信噪比对基底神经节,默认模式和小脑网络的空间图强度具有显着影响。 AFNI离群比,纵向位移和DVARS对感觉运动网络的BOLD功率谱显示出显着影响。时间序列的全局相关性显示了大多数网络中频谱功率的广泛调制。进一步研究IQ量度对内在连通性大脑网络的特征的影响,可以更准确地解释fMRI结果。

著录项

  • 期刊名称 other
  • 作者

    Behnaz Jarrahi; Sean Mackey;

  • 作者单位
  • 年(卷),期 -1(2018),-1
  • 年度 -1
  • 页码 1041–1045
  • 总页数 12
  • 原文格式 PDF
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