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首页> 外文期刊>Journal of Eye Movement Research >Estimation of overlapped Eye Fixation Related Potentials: The General Linear Model, a more flexible framework than the ADJAR algorithm
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Estimation of overlapped Eye Fixation Related Potentials: The General Linear Model, a more flexible framework than the ADJAR algorithm

机译:眼动重叠相关电位的估计:通用线性模型,比ADJAR算法更灵活的框架

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The Eye Fixation Related Potential (EFRP) estimation is the average of EEG signals across epochs at ocular fixation onset. Its main limitation is the overlapping issue. Inter Fixation Intervals (IFI) - typically around 300 ms in the case of unrestricted eye movement- depend on participants’ oculomotor patterns, and can be shorter than the latency of the components of the evoked potential. If the duration of an epoch is longer than the IFI value, more than one fixation can occur, and some overlapping between adjacent neural responses ensues. The classical average does not take into account either the presence of several fixations during an epoch or overlapping. The Adjacent Response algorithm (ADJAR), which is popular for event-related potential estimation, was compared to the General Linear Model (GLM) on a real dataset from a conjoint EEG and eye-tracking experiment to address the overlapping issue. The results showed that the ADJAR algorithm was based on assumptions that were too restrictive for EFRP estimation. The General Linear Model appeared to be more robust and efficient. Different configurations of this model were compared to estimate the potential elicited at image onset, as well as EFRP at the beginning of exploration. These configurations took into account the overlap between the event-related potential at stimulus presentation and the following EFRP, and the distinction between the potential elicited by the first fixation onset and subsequent ones. The choice of the General Linear Model configuration was a tradeoff between assumptions about expected behavior and the quality of the EFRP estimation: the number of different potentials estimated by a given model must be controlled to avoid erroneous estimations with large variances.
机译:眼固定相关电位(EFRP)估计是眼固定开始时各个时期的EEG信号的平均值。它的主要限制是重叠问题。眼动间隔时间(IFI)通常在无限制眼动的情况下约为300毫秒,取决于参与者的动眼模式,并且可能短于诱发电位分量的潜伏期。如果历时的持续时间长于IFI值,则可能发生不止一种固定,并且随后相邻神经反应之间会发生一些重叠。古典平均值不考虑在一个时期或重叠期间存在多个注视。在联合脑电图和眼动追踪实验的真实数据集上,将流行于事件相关电位估计的邻近响应算法(ADJAR)与通用线性模型(GLM)进行了比较,以解决重叠问题。结果表明,ADJAR算法基于对EFRP估计过于严格的假设。通用线性模型似乎更加健壮和高效。比较了该模型的不同配置,以估计图像开始时以及在探索开始时产生的EFRP的潜力。这些配置考虑了刺激呈现时与事件相关的电位和随后的EFRP之间的重叠,以及第一次固定发作和随后的固定引起的电位之间的区别。通用线性模型配置的选择是在关于预期行为的假设与EFRP估计的质量之间进行权衡:必须控制给定模型所估计的不同电势的数量,以免出现大方差的错误估计。

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