Neuroscience and Mental Health group, Institute of Cognitive Neuroscience, University College London, London, UK.
Department of Psychology, Seoul National University, Seoul, Korea.
Nat Hum Behav. 2019 Oct;3(10):1116-1123. doi: 10.1038/s41562-019-0628-0. Epub 2019 Jun 17.
Anxiety is characterized by altered responses under uncertain conditions, but the precise mechanism by which uncertainty changes the behaviour of anxious individuals is unclear. Here we probe the computational basis of learning under uncertainty in healthy individuals and individuals suffering from a mix of mood and anxiety disorders. Participants were asked to choose between four competing slot machines with fluctuating reward and punishment outcomes during safety and stress. We predicted that anxious individuals under stress would learn faster about punishments and exhibit choices that were more affected by those punishments, thus formalizing our predictions as parameters in reinforcement learning accounts of behaviour. Overall, the data suggest that anxious individuals are quicker to update their behaviour in response to negative outcomes (increased punishment learning rates). When treating anxiety, it may therefore be more fruitful to encourage anxious individuals to integrate information over longer horizons when bad things happen, rather than try to blunt their responses to negative outcomes.
焦虑的特点是在不确定条件下出现改变的反应,但不确定如何改变焦虑个体的行为的精确机制尚不清楚。在这里,我们探究了健康个体和患有混合情绪和焦虑障碍个体在不确定条件下学习的计算基础。在安全和压力期间,参与者被要求在四个具有波动奖励和惩罚结果的竞争插槽机之间进行选择。我们预测,压力下的焦虑个体对惩罚的学习速度会更快,并表现出更受这些惩罚影响的选择,从而将我们的预测正式形式化为行为强化学习解释中的参数。总的来说,数据表明,焦虑个体在对负面结果(增加惩罚学习率)做出反应时,会更快地更新他们的行为。因此,在治疗焦虑症时,鼓励焦虑个体在坏事发生时从更长远的角度整合信息,而不是试图减轻他们对负面结果的反应,可能会更有成效。