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Time-variant analysis of fast-fMRI and dynamic contrast agent MRI sequences as examples of 4-dimensional image analysis.

机译:快速fMRI和动态造影剂MRI序列的时变分析,作为4维图像分析的示例。

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OBJECTIVES: Image sequences with time-varying information content need appropriate analysis strategies. The exploration of directed information transfer (interactions) between neuronal assemblies is one of the most important aims of current functional MRI (fMRI) analysis. Additionally, we examined perfusion maps in dynamic contrast agent MRI sequences of stroke patients. In this investigation, the focus centers on distinguishing between brain areas with normal and reduced perfusion on the basis of the dynamics of contrast agent inflow and washout. METHODS: Fast fMRI sequences were analyzed with time-variant Granger causality (tvGC). The tvGC is based on a time-variant autoregressive model and is used for the quantification of the directed information transfer between activated brain areas. Generalized Dynamic Neural Networks (GDNN) with time-variant weights were applied on dynamic contrast agent MRI sequences as a nonlinear operator in order to enhance differences in the signal courses of pixels of normal and injured tissues. RESULTS: A simple motor task (self-paced finger tapping) is used in an fMRI design to investigate directed interactions between defined brain areas. A significant information transfer can be determined for the direction primary motor cortex to supplementary motor area during a short time period of about five seconds after stimulus. The analysis of dynamic contrast agent MRI sequences demonstrates that the trained GDNN enables a reliable tissue classification. Three classes are of interest: normal tissue, tissue at risk for death, and dead tissue. CONCLUSIONS: The time-variant multivariate analysis of directed information transfer derived from fMRI sequences and the computation of perfusion maps by GDNN demonstrate that dynamic analysis methods are essential tools for 4D image analysis.
机译:目的:信息内容随时间变化的图像序列需要适当的分析策略。探索神经元组件之间的定向信息传递(相互作用)是当前功能性MRI(fMRI)分析的最重要目标之一。此外,我们检查了脑卒中患者动态造影剂MRI序列中的灌注图。在这项研究中,重点是根据造影剂流入和冲洗的动力学来区分正常和灌注减少的大脑区域。方法:使用时变格兰杰因果关系(tvGC)分析快速fMRI序列。 tvGC基于时变自回归模型,用于量化激活的大脑区域之间定向信息的传递。具有时变权重的广义动态神经网络(GDNN)作为非线性算子应用于动态造影剂MRI序列,以增强正常组织和受伤组织像素的信号路径差异。结果:在功能磁共振成像设计中使用了一个简单的运动任务(自定进度的手指敲击)来研究定义的大脑区域之间的定向相互作用。在刺激后大约五秒钟的短时间内,可以确定主要电机皮质向辅助运动区方向的重要信息传递。动态造影剂MRI序列的分析表明,训练有素的GDNN可实现可靠的组织分类。感兴趣的三类是:正常组织,有死亡危险的组织和死组织。结论:从功能磁共振成像序列的定向信息传递的时变多变量分析和GDNN的灌注图计算表明,动态分析方法是4D图像分析的必要工具。

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