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Neural response to pictorial health warning labels can predict smoking behavioral change

机译:对图片健康警告标签的神经反应可以预测吸烟行为的变化

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摘要

In order to improve our understanding of how pictorial health warning labels (HWLs) influence smoking behavior, we examined whether brain activity helps to explain smoking behavior above and beyond self-reported effectiveness of HWLs. We measured the neural response in the ventromedial prefrontal cortex (vmPFC) and the amygdala while adult smokers viewed HWLs. Two weeks later, participants’ self-reported smoking behavior and biomarkers of smoking behavior were reassessed. We compared multiple models predicting change in self-reported smoking behavior (cigarettes per day [CPD]) and change in a biomarkers of smoke exposure (expired carbon monoxide [CO]). Brain activity in the vmPFC and amygdala not only predicted changes in CO, but also accounted for outcome variance above and beyond self-report data. Neural data were most useful in predicting behavioral change as quantified by the objective biomarker (CO). This pattern of activity was significantly modulated by individuals’ intention to quit. The finding that both cognitive (vmPFC) and affective (amygdala) brain areas contributed to these models supports the idea that smokers respond to HWLs in a cognitive-affective manner. Based on our findings, researchers may wish to consider using neural data from both cognitive and affective networks when attempting to predict behavioral change in certain populations (e.g. cigarette smokers).
机译:为了增进我们对图形健康警告标签(HWLs)如何影响吸烟行为的理解,我们检查了大脑活动是否有助于解释超出自我报告的HWLs有效性的吸烟行为。当成年吸烟者观察HWL时,我们测量了腹侧前额叶皮层(vmPFC)和杏仁核的神经反应。两周后,重新评估了参与者的自我报告吸烟行为和吸烟行为的生物标志物。我们比较了多种模型,这些模型预测自我报告的吸烟行为(每天的卷烟[CPD])和烟雾暴露的生物标志物(过期的一氧化碳[CO])变化。 vmPFC和杏仁核中的大脑活动不仅可以预测CO的变化,而且可以解释超出自我报告数据的结果差异。神经数据对预测行为变化最有用,如客观生物标志物(CO)所量化。这种活动方式受到个人退出意愿的明显影响。认知(vmPFC)和情感(杏仁)大脑区域均对这些模型有所贡献的发现支持吸烟者以认知-情感方式对HWL做出反应的想法。根据我们的发现,研究人员可能希望在尝试预测某些人群(例如吸烟者)的行为变化时考虑使用来自认知和情感网络的神经数据。

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