心理学
扁桃形结构
前额叶皮质
焦虑
神经影像学
神经科学
认知心理学
概化理论
功能磁共振成像
刺激(心理学)
扣带回前部
前额叶腹内侧皮质
认知
发展心理学
精神科
作者
Peter S. Kirk,Oliver J. Robinson,Jeremy I. Skipper
标识
DOI:10.1016/j.neuropsychologia.2022.108194
摘要
Rodent and human studies have implicated an amygdala-prefrontal circuit during threat processing. One possibility is that while amygdala activity underlies core features of anxiety (e.g. detection of salient information), prefrontal cortices (i.e. dorsomedial prefrontal/anterior cingulate cortex) entrain its responsiveness. To date, this has been established in tightly controlled paradigms (predominantly using static face perception tasks) but has not been extended to more naturalistic settings. Consequently, using ‘movie fMRI’—in which participants watch ecologically-rich movie stimuli rather than constrained cognitive tasks—we sought to test whether individual differences in anxiety correlate with the degree of face-dependent amygdala-prefrontal coupling in two independent samples. Analyses suggested increased face-dependent superior parietal activation and decreased speech-dependent auditory cortex activation as a function of anxiety. However, we failed to find evidence for anxiety-dependent connectivity, neither in our stimulus-dependent or -independent analyses. Our findings suggest that work using experimentally constrained tasks may not replicate in more ecologically valid settings and, moreover, highlight the importance of testing the generalizability of neuroimaging findings outside of the original context. • Using ‘movie fMRI’, we tested whether trait anxiety correlates with face-dependent amygdala-prefrontal coupling. • We observed altered superior parietal activation to faces and auditory cortex activation to speech as a function of anxiety. • We failed to find evidence for anxiety-dependent amygdala-dmPFC connectivity in stimulus-dependent or -independent analyses. • Our findings highlight the importance of testing the generalizability of neuroimaging findings outside of the original context.
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