Cultural and Social Neuroscience Group, Department of Neuroimaging, Institute of Psychiatry, Psychology & Neuroscience, King's College London, London, United Kingdom.
Neuropharmacology Group, Department of Neuroimaging, Institute of Psychiatry, Psychology & Neuroscience, King's College London, London, United Kingdom.
PLoS Comput Biol. 2020 Oct 15;16(10):e1008372. doi: 10.1371/journal.pcbi.1008372. eCollection 2020 Oct.
Current computational models suggest that paranoia may be explained by stronger higher-order beliefs about others and increased sensitivity to environments. However, it is unclear whether this applies to social contexts, and whether it is specific to harmful intent attributions, the live expression of paranoia. We sought to fill this gap by fitting a computational model to data (n = 1754) from a modified serial dictator game, to explore whether pre-existing paranoia could be accounted by specific alterations to cognitive parameters characterising harmful intent attributions. We constructed a 'Bayesian brain' model of others' intent, which we fitted to harmful intent and self-interest attributions made over 18 trials, across three different partners. We found that pre-existing paranoia was associated with greater uncertainty about other's actions. It moderated the relationship between learning rates and harmful intent attributions, making harmful intent attributions less reliant on prior interactions. Overall, the magnitude of harmful intent attributions was directly related to their uncertainty, and importantly, the opposite was true for self-interest attributions. Our results explain how pre-existing paranoia may be the result of an increased need to attend to immediate experiences in determining intentional threat, at the expense of what is already known, and more broadly, they suggest that environments that induce greater probabilities of harmful intent attributions may also induce states of uncertainty, potentially as an adaptive mechanism to better detect threatening others. Importantly, we suggest that if paranoia were able to be explained exclusively by core domain-general alterations we would not observe differential parameter estimates underlying harmful-intent and self-interest attributions.
当前的计算模型表明,偏执狂可能是由于对他人的更高阶信念更强,以及对环境的敏感性增加所导致的。然而,目前尚不清楚这是否适用于社交情境,也不清楚它是否特定于有害意图归因,即偏执狂的生动表现。我们试图通过将计算模型拟合到(n = 1754)修改后的连续独裁者游戏的数据中,来填补这一空白,以探索预先存在的偏执狂是否可以通过特定的认知参数改变来解释,这些参数特征是有害意图归因。我们构建了一个关于他人意图的“贝叶斯大脑”模型,该模型适用于在三个不同的伙伴的 18 次试验中做出的有害意图和自身利益归因。我们发现,预先存在的偏执狂与对他人行为的更大不确定性有关。它调节了学习率与有害意图归因之间的关系,使有害意图归因不太依赖于先前的互动。总体而言,有害意图归因的程度与它们的不确定性直接相关,重要的是,自身利益归因则相反。我们的研究结果解释了为什么预先存在的偏执狂可能是由于在确定有意威胁时需要更多地关注即时体验而导致的,而牺牲了已经知道的东西,更广泛地说,它们表明,会引起更多有害意图归因的环境也可能会引起不确定性状态,这可能是一种更好地检测有威胁的他人的适应性机制。重要的是,我们建议,如果偏执狂可以完全通过核心领域通用的改变来解释,那么我们不会观察到有害意图和自身利益归因的基础参数估计存在差异。