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Model-free fMRI group analysis using FENICA.

机译:使用FENICA的无模型fMRI组分析。

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Exploratory analysis of functional MRI data allows activation to be detected even if the time course differs from that which is expected. Independent Component Analysis (ICA) has emerged as a powerful approach, but current extensions to the analysis of group studies suffer from a number of drawbacks: they can be computationally demanding, results are dominated by technical and motion artefacts, and some methods require that time courses be the same for all subjects or that templates be defined to identify common components. We have developed a group ICA (gICA) method which is based on single-subject ICA decompositions and the assumption that the spatial distribution of signal changes in components which reflect activation is similar between subjects. This approach, which we have called Fully Exploratory Network Independent Component Analysis (FENICA), identifies group activation in two stages. ICA is performed on the single-subject level, then consistent components are identified via spatial correlation. Group activation maps are generated in a second-level GLM analysis. FENICA is applied to data from three studies employing a wide range of stimulus and presentation designs. These are an event-related motor task, a block-design cognition task and an event-related chemosensory experiment. In all cases, the group maps identified by FENICA as being the most consistent over subjects correspond to task activation. There is good agreement between FENICA results and regions identified in prior GLM-based studies. In the chemosensory task, additional regions are identified by FENICA and temporal concatenation ICA that we show is related to the stimulus, but exhibit a delayed response. FENICA is a fully exploratory method that allows activation to be identified without assumptions about temporal evolution, and isolates activation from other sources of signal fluctuation in fMRI. It has the advantage over other gICA methods that it is computationally undemanding, spotlights components relating to activation rather than artefacts, allows the use of familiar statistical thresholding through deployment of a higher level GLM analysis and can be applied to studies where the paradigm is different for all subjects.
机译:对功能性MRI数据的探索性分析可以检测到激活,即使时间进程与预期的有所不同。独立成分分析(ICA)已经成为一种功能强大的方法,但是当前对组研究分析的扩展存在许多缺点:它们可能在计算上要求很高,结果受技术和运动伪像支配,并且某些方法需要时间所有科目的课程都相同,或者定义模板以识别共同的组成部分。我们已经开发了一种基于单个对象ICA分解的ICA组(gICA)方法,并假设受试者之间反映激活的组件中信号变化的空间分布相似。我们将这种方法称为完全探索性网络独立组件分析(FENICA),它在两个阶段识别组激活。 ICA在单对象级别上执行,然后通过空间相关性确定一致的分量。组激活图是在第二级GLM分析中生成的。 FENICA应用于来自采用广泛刺激和表示设计的三项研究的数据。这些是与事件有关的运动任务,块设计认知任务和与事件有关的化学感觉实验。在所有情况下,FENICA标识为在主题上最一致的组图对应于任务激活。 FENICA结果与先前基于GLM的研究中确定的区域之间有很好的一致性。在化学传感任务中,我们显示的其他区域由FENICA和时间串联ICA识别,与刺激相关,但显示出延迟的反应。 FENICA是一种完全探索性的方法,可以在不假设时间演变的情况下识别激活,并将激活与功能磁共振成像中其他信号波动源隔离开来。与其他gICA方法相比,它具有计算上不需要的优点,它着眼于激活而不是伪像的组件,可以通过部署更高级别的GLM分析来使用熟悉的统计阈值,并且可以应用于范式不同的研究。所有科目。

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