瞳孔测量
瞳孔反应
认知
认知心理学
瞳孔光反射
心理学
基本认知任务
瞳孔反射
亮度
瞳孔大小
新颖性
认知测验
睡眠剥夺对认知功能的影响
反射
计算机科学
小学生
人工智能
神经科学
社会心理学
作者
Russell Cohen Hoffing,Steven M. Thurman,Joseph T. Coyne,Ciara Sibley,Leah R. Enders,Heather Roy
出处
期刊:Journal of Vision
[Association for Research in Vision and Ophthalmology]
日期:2023-08-01
卷期号:23 (9): 5839-5839
标识
DOI:10.1167/jov.23.9.5839
摘要
Cognitive pupillometry in the “wild” (outside laboratory control) faces the difficulty of low signal-to-noise due to relatively larger scale pupil size fluctuations induced by luminance variation. A proposed method to improve inference of cognitive processes in natural environments is to amplify the cognitive signal by methodologically controlling for, or statistically removing, the influence of the pupillary light reflex (PLR). Here we suggest an alternative method by purposefully inducing PLR’s and measuring variation in the shape of the PLR waveform to infer cognitive states. To explore this possibility, we induced the PLR in two different experiments while subjects performed a wide range of cognitive tasks. In one experiment participants navigated a stressful naturalistic virtual environment while searching for targets. During the experiment the screen flashed white to mimic a flashbang to induce a stress response and PLR. In the second experiment participants viewed simple flashing stimuli to induce the PLR before and after completing a battery of cognitive tests. First, our results show that aspects of the PLR vary over time and when concomitant with experimental manipulations of cognitive processes. Second, we demonstrate statistically significant and interesting relationships between aspects of the PLR (I.e., latency of the PLR, velocity and magnitude of the constriction) and behavioral performance. Together these results suggest that the PLR variation has the potential to be used reliably as a measure of cognitive processing and may be especially useful in naturalistic experimentation.
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