Brain Imaging Research Center, Department of Psychiatry, University of Arkansas for Medical Sciences, Little Rock, Arkansas, United States of America.
PLoS One. 2022 Mar 3;17(3):e0264758. doi: 10.1371/journal.pone.0264758. eCollection 2022.
In this study we merged methods from machine learning and human neuroimaging to test the role of self-induced affect processing states in biasing the affect processing of subsequent image stimuli. To test this relationship we developed a novel paradigm in which (n = 40) healthy adult participants observed affective neural decodings of their real-time functional magnetic resonance image (rtfMRI) responses as feedback to guide explicit regulation of their brain (and corollary affect processing) state towards a positive valence goal state. By this method individual differences in affect regulation ability were controlled. Attaining this brain-affect goal state triggered the presentation of pseudo-randomly selected affectively congruent (positive valence) or incongruent (negative valence) image stimuli drawn from the International Affective Picture Set. Separately, subjects passively viewed randomly triggered positively and negatively valent image stimuli during fMRI acquisition. Multivariate neural decodings of the affect processing induced by these stimuli were modeled using the task trial type (state- versus randomly-triggered) as the fixed-effect of a general linear mixed-effects model. Random effects were modeled subject-wise. We found that self-induction of a positive valence brain state significantly positively biased valence processing of subsequent stimuli. As a manipulation check, we validated affect processing state induction achieved by the image stimuli using independent psychophysiological response measures of hedonic valence and autonomic arousal. We also validated the predictive fidelity of the trained neural decoding models using brain states induced by an out-of-sample set of image stimuli. Beyond its contribution to our understanding of the neural mechanisms that bias affect processing, this work demonstrated the viability of novel experimental paradigms triggered by pre-defined cognitive states. This line of individual differences research potentially provides neuroimaging scientists with a valuable tool for exploring the roles and identities of intrinsic cognitive processing mechanisms that shape our perceptual processing of sensory stimuli.
在这项研究中,我们融合了机器学习和人类神经影像学的方法,以测试自我诱发的情感处理状态在影响后续图像刺激的情感处理中的作用。为了检验这种关系,我们开发了一种新的范式,其中(n=40)健康成年参与者观察他们实时功能磁共振成像(rtfMRI)反应的情感神经解码作为反馈,以指导他们的大脑(和相应的情感处理)状态朝着积极的效价目标状态进行明确的调节。通过这种方法,控制了个体在情感调节能力方面的差异。达到这种大脑-情感目标状态会触发呈现从国际情感图片集中随机选择的情感一致(积极效价)或不一致(消极效价)的图像刺激。另外,在 fMRI 采集过程中,受试者被动地观看随机触发的具有积极和消极效价的图像刺激。使用任务试验类型(状态触发与随机触发)作为广义线性混合效应模型的固定效应,对这些刺激引起的情感处理的多变量神经解码进行建模。随机效应以个体为模型。我们发现,自我诱导积极效价的大脑状态显著地偏向于后续刺激的效价处理。作为一种操作检查,我们使用独立的愉悦性和自主唤醒的生理心理反应测量来验证图像刺激所实现的情感处理状态诱导。我们还使用来自样本外图像刺激集的大脑状态验证了经过训练的神经解码模型的预测保真度。除了对偏向情感处理的神经机制的理解做出贡献外,这项工作还展示了由预定义认知状态触发的新型实验范式的可行性。这种个体差异研究为神经影像学科学家提供了一种有价值的工具,用于探索塑造我们对感觉刺激的感知处理的内在认知处理机制的作用和身份。