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首页> 外文期刊>Computational intelligence and neuroscience >Ragu: A Free Tool for the Analysis of EEG and MEG Event-Related Scalp Field Data Using Global Randomization Statistics
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Ragu: A Free Tool for the Analysis of EEG and MEG Event-Related Scalp Field Data Using Global Randomization Statistics

机译:Ragu:使用全球随机统计数据分析脑电图和脑电图事件相关头皮领域数据的免费工具

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摘要

We present a program (Ragu; Randomization Graphical User interface) for statistical analyses of multichannel event-related EEG and MEG experiments. Based on measures of scalp field differences including all sensors, and using powerful, assumption-free randomization statistics, the program yields robust, physiologically meaningful conclusions based on the entire, untransformed, and unbiased set of measurements. Ragu accommodates up to two within-subject factors and one between-subject factor with multiple levels each. Significance is computed as function of time and can be controlled for type II errors with overall analyses. Results are displayed in an intuitive visual interface that allows further exploration of the findings. A sample analysis of an ERP experiment illustrates the different possibilities offered by Ragu. The aim of Ragu is to maximize statistical power while minimizing the need for a-priori choices of models and parameters (like inverse models or sensors of interest) that interact with and bias statistics.
机译:我们提出了一个程序(Ragu;随机图形用户界面),用于多通道事件相关脑电图和MEG实验的统计分析。基于包括所有传感器在内的头皮场差异的度量,并使用强大的,无假设的随机统计数据,该程序可基于完整,未变换且无偏的一组度量得出健壮的,具有生理意义的结论。 Ragu最多可容纳两个主题内因素和一个主题间因素,每个因素具有多个级别。显着性是作为时间的函数计算的,可以通过整体分析来控制II类错误。结果显示在直观的可视界面中,可以进一步探索发现。对ERP实验的样本分析说明了Ragu提供的不同可能性。 Ragu的目的是最大化统计能力,同时最大程度地减少与统计数据相互作用并偏向统计数据的模型和参数(例如逆模型或感兴趣的传感器)的先验选择的需求。

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