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Spatial parcellations spectral filtering and connectivity measures in fMRI: Optimizing for discrimination

机译:功能磁共振成像中的空间分割频谱过滤和连通性测量:优化区分

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摘要

The analysis of Functional Connectivity (FC) is a key technique of fMRI, having been used to distinguish brain states and conditions. While many approaches to calculating FC are available, there have been few assessments of their differences, making it difficult to choose approaches, and compare results. Here, we assess the impact of methodological choices on discriminability, using a fully controlled data set of continuous active states involving basic visual and motor tasks, providing robust localized FC changes. We tested a range of anatomical and functional parcellations, including the AAL atlas, parcellations derived from the Human Connectome Project and Independent Component Analysis (ICA) of many dimensionalities. We measure amplitude, covariance, correlation, and regularized partial correlation under different temporal filtering choices. We evaluate features derived from these methods for discriminating states using MVPA. We find that multidimensional parcellations derived from functional data performed similarly, outperforming an anatomical atlas, with correlation and partial correlation (p < .05, FDR). Partial correlation, with appropriate regularization, outperformed correlation. Amplitude and covariance generally discriminated less well, although gave good results with high‐dimensionality ICA. We found that discriminative FC properties are frequency specific; higher frequencies performed surprisingly well under certain configurations of atlas choices and dependency measures, with ICA‐based parcellations revealing greater discriminability at high frequencies compared to other parcellations. Methodological choices in FC analyses can have a profound impact on results and can be selected to optimize accuracy, interpretability, and sharing of results. This work contributes to a basis for consistent selection of approaches to estimating and analyzing FC.
机译:功能连接性(FC)的分析是fMRI的一项关键技术,已被用于区分大脑状态和状况。尽管有许多计算FC的方法可用,但对其差异的评估很少,因此很难选择方法和比较结果。在这里,我们使用涉及基本视觉和运动任务的连续活动状态的完全受控数据集,评估方法选择对可识别性的影响,并提供可靠的局部FC变化。我们测试了一系列解剖学和功能性切分法,包括AAL图集,源自人类Connectome项目的切分法和许多维度的独立成分分析(ICA)。我们在不同的时间滤波选择下测量幅度,协方差,相关性和正则化的部分相关性。我们评估从这些方法派生的特征,以使用MVPA区分状态。我们发现,从功能数据中提取的多维碎片具有相似性,表现优于具有相关性和部分相关性的解剖图谱(p <0.05。FDR)。通过适当的正则化,部分相关的性能优于相关。幅值和协方差的分辨力较差,尽管使用高维ICA可获得良好的结果。我们发现,判别式FC属性是特定于频率的。在某些图集选择和依赖性测量的特定配置下,较高的频率表现出奇的好,与其他分类相比,基于ICA的分类显示出较高的高频可分辨性。 FC分析中的方法选择可能会对结果产生深远影响,可以选择它们来优化准确性,可解释性和结果共享。这项工作为一致选择估计和分析FC的方法奠定了基础。

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