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Characterization of the univariate and multivariate techniques on the analysis of simulated and fMRI datasets with visual task

机译:具有视觉任务的模拟和fMRI数据集分析中的单变量和多变量技术表征

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Current analytical techniques applied to functional MRI (fMRI) data may be generally divided into two parts: univariate and multivariate techniques. It is therefore our attempt to evaluate and intercompare their respective algorithms on simulated and fMRI visual task data sets. In this study, the two representative univariate approaches, including the correlation and the specified-resolution wavelet analytical methods, and three multivariate based independent component analysis (ICA) approaches; including the Infomax ICA, the Fast ICA, and the JADE ICA are used for the purposes. Two simulated spatial sources with different time courses and noise levels and one fMRI dataset with visual task were employed for intercomparisons. Strategies for quantifying the performance of these techniques, the correlation analysis and receiver operating characteristics (ROC) are used to evaluate their respective accuracies on estimated time-courses and spatial layouts from the simulated and the fMRI visual task dataset In our results, it demonstrates that the multivariate techniques generally outperformed the univariate techniques, among which the Fast ICA performs satisfactory well on temporal and spatial accuracy.
机译:应用于功能性MRI(fMRI)数据的当前分析技术通常可分为两部分:单变量和多变量技术。因此,我们尝试在模拟和fMRI视觉任务数据集上评估和相互比较各自的算法。在这项研究中,两种代表性的单变量方法,包括相关性和指定分辨率的小波分析方法,以及三种基于多元变量的独立成分分析(ICA)方法;包括Infomax ICA,Fast ICA和JADE ICA均用于此目的。比较了两个具有不同时程和噪声水平的模拟空间源以及一个具有视觉任务的fMRI数据集进行比对。量化这些技术性能的策略,相关性分析和接收器工作特性(ROC)用于从模拟和fMRI视觉任务数据集中评估估计的时程和空间布局的各自准确性。在我们的结果中,它表明了多元技术通常要优于单变量技术,其中快速ICA在时间和空间准确性方面表现令人满意。

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