Department of Psychology and Center for Neural Science, New York University, 6 Washington Place, New York, NY, 10003, USA.
Human Motor Control Section, Medical Neurology Branch, National Institute of Neurological Disorders and Stroke, NIH, Bethesda, MD, USA.
Behav Res Methods. 2020 Oct;52(5):1991-2007. doi: 10.3758/s13428-020-01368-6.
Pupil size is an easily accessible, noninvasive online indicator of various perceptual and cognitive processes. Pupil measurements have the potential to reveal continuous processing dynamics throughout an experimental trial, including anticipatory responses. However, the relatively sluggish (~2 s) response dynamics of pupil dilation make it challenging to connect changes in pupil size to events occurring close together in time. Researchers have used models to link changes in pupil size to specific trial events, but such methods have not been systematically evaluated. Here we developed and evaluated a general linear model (GLM) pipeline that estimates pupillary responses to multiple rapid events within an experimental trial. We evaluated the modeling approach using a sample dataset in which multiple sequential stimuli were presented within 2-s trials. We found: (1) Model fits improved when the pupil impulse response function (PuRF) was fit for each observer. PuRFs varied substantially across individuals but were consistent for each individual. (2) Model fits also improved when pupil responses were not assumed to occur simultaneously with their associated trial events, but could have non-zero latencies. For example, pupil responses could anticipate predictable trial events. (3) Parameter recovery confirmed the validity of the fitting procedures, and we quantified the reliability of the parameter estimates for our sample dataset. (4) A cognitive task manipulation modulated pupil response amplitude. We provide our pupil analysis pipeline as open-source software (Pupil Response Estimation Toolbox: PRET) to facilitate the estimation of pupil responses and the evaluation of the estimates in other datasets.
瞳孔大小是一种易于获取的、非侵入性的在线指标,可以反映各种感知和认知过程。瞳孔测量有潜力揭示实验过程中的连续处理动态,包括预期反应。然而,瞳孔扩张的相对缓慢(~2 秒)的响应动态使得很难将瞳孔大小的变化与时间上紧密相关的事件联系起来。研究人员已经使用模型将瞳孔大小的变化与特定的试验事件联系起来,但这种方法尚未得到系统的评估。在这里,我们开发并评估了一种通用线性模型 (GLM) 管道,该模型可以估计实验过程中多个快速事件的瞳孔反应。我们使用一个样本数据集来评估建模方法,其中在 2 秒的试验中呈现了多个连续刺激。我们发现:(1)当为每个观察者拟合瞳孔脉冲响应函数 (PuRF) 时,模型拟合得到改善。PuRF 在个体之间有很大差异,但对于每个个体都是一致的。(2)当假设瞳孔反应不是与它们相关的试验事件同时发生,而是可以有非零潜伏期时,模型拟合也得到改善。例如,瞳孔反应可以预测可预测的试验事件。(3)参数恢复证实了拟合过程的有效性,我们量化了我们样本数据集的参数估计的可靠性。(4)认知任务操作调制了瞳孔反应幅度。我们提供了我们的瞳孔分析管道作为开源软件(瞳孔反应估计工具箱:PRET),以方便瞳孔反应的估计和其他数据集的估计评估。