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Deconvolving BOLD activation in event-related designs for multivoxel pattern classification analyses

机译:将事件相关设计中的BOLD激活解卷积以进行多体素模式分类分析

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Use of multivoxel pattern analysis (MVPA) to predict the cognitive state of a subject during task performance has become a popular focus of fMRI studies. The input to these analyses consists of activation patterns corresponding to different tasks or stimulus types. These activation patterns are fairly straightforward to calculate for blocked trials or slow event-related designs, but for rapid event-related designs the evoked BOLD signal for adjacent trials will overlap in time, complicating the identification of signal unique to specific trials. Rapid event-related designs are often preferred because they allow for more stimuli to be presented and subjects tend to be more focused on the task, and thus it would be beneficial to be able to use these types of designs in MVPA analyses. The present work compares 8 different models for estimating trial-by-trial activation patterns for a range of rapid event-related designs varying by interstimulus interval and signal-to-noise ratio. The most effective approach obtains each trial's estimate through a general linear model including a regressor for that trial as well as another regressor for all other trials. Through the analysis of both simulated and real data we have found that this model shows some improvement over the standard approaches for obtaining activation patterns. The resulting trial-by-trial estimates are more representative of the true activation magnitudes, leading to a boost in classification accuracy in fast event-related designs with higher signal-to-noise. This provides the potential for fMRI studies that allow simultaneous optimization of both univariate and MVPA approaches.
机译:在任务执行过程中使用多体素模式分析(MVPA)来预测受试者的认知状态已成为功能性MRI研究的重点。这些分析的输入由对应于不同任务或刺激类型的激活模式组成。这些激活模式对于封闭试验或与慢事件相关的设计而言,计算起来非常简单,但对于快速事件相关的设计,相邻试验的诱发BOLD信号会在时间上重叠,从而使特定试验所特有的信号识别变得复杂。快速事件相关的设计通常是首选的,因为它们允许呈现更多的刺激并且受试者倾向于更加专注于任务,因此能够在MVPA分析中使用这些类型的设计将是有益的。本工作比较了8种不同的模型,以估计随事件间隔和信噪比而变化的一系列快速事件相关设计的逐次尝试激活模式。最有效的方法是通过一个通用线性模型(包括该试验的回归变量以及所有其他试验的另一个回归变量)获得每个试验的估计值。通过对模拟数据和真实数据的分析,我们发现该模型相对于获取激活模式的标准方法显示出一些改进。最终的逐次试验估算值更能代表真实的激活幅度,从而在信噪比较高的快速事件相关设计中提高了分类精度。这为功能磁共振成像研究提供了潜力,可以同时优化单变量和MVPA方法。

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