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首页> 外文期刊>Psychophysiology >How much baseline correction do we need in ERP research? Extended GLM model can replace baseline correction while lifting its limits
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How much baseline correction do we need in ERP research? Extended GLM model can replace baseline correction while lifting its limits

机译:我们在ERP研究中需要多少基线更正? 扩展GLM模型可以在提升其限制时取代基线校正

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摘要

Baseline correction plays an important role in past and current methodological debates in ERP research (e.g., the Tanner vs. Maess debate in the Journal of Neuroscience Methods), serving as a potential alternative to strong high-pass filtering. However, the very assumptions that underlie traditional baseline also undermine it, implying a reduction in the signal-to-noise ratio. In other words, traditional baseline correction is statistically unnecessary and even undesirable. Including the baseline interval as a predictor in a GLM-based statistical approach allows the data to determine how much baseline correction is needed, including both full traditional and no baseline correction as special cases. This reduces the amount of variance in the residual error term and thus has the potential to increase statistical power.
机译:基线纠正在ERP研究中的过去和当前方法论辩论中起着重要作用(例如,在神经科学方法中的Tanner与Maess辩论中),作为强大的高通滤波的潜在替代品。 然而,具有传统基线的假设也破坏了它,这意味着减少信噪比。 换句话说,传统的基线矫正是统计上不必要的,甚至不受欢迎的。 包括基于GLM的统计方法的基线间隔作为预测器,允许数据确定需要多少基线校正,包括全传统和无基线校正作为特殊情况。 这降低了残余误差项中的方差量,因此具有增加统计功率的可能性。

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