A Computational Model of Hopelessness and Active-Escape Bias in Suicidality.

Computational psychiatry (Cambridge, Mass.) Pub Date : 2022-03-31 eCollection Date: 2022-01-01 DOI:10.5334/cpsy.80
Povilas Karvelis, Andreea O Diaconescu
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Abstract

Currently, psychiatric practice lacks reliable predictive tools and a sufficiently detailed mechanistic understanding of suicidal thoughts and behaviors (STB) to provide timely and personalized interventions. Developing computational models of STB that integrate across behavioral, cognitive and neural levels of analysis could help better understand STB vulnerabilities and guide personalized interventions. To that end, we present a computational model based on the active inference framework. With this model, we show that several STB risk markers - hopelessness, Pavlovian bias and active-escape bias - are interrelated via the drive to maximize one's model evidence. We propose four ways in which these effects can arise: (1) increased learning from aversive outcomes, (2) reduced belief decay in response to unexpected outcomes, (3) increased stress sensitivity and (4) reduced sense of stressor controllability. These proposals stem from considering the neurocircuits implicated in STB: how the locus coeruleus - norepinephrine (LC-NE) system together with the amygdala (Amy), the dorsal prefrontal cortex (dPFC) and the anterior cingulate cortex (ACC) mediate learning in response to acute stress and volatility as well as how the dorsal raphe nucleus - serotonin (DRN-5-HT) system together with the ventromedial prefrontal cortex (vmPFC) mediate stress reactivity based on perceived stressor controllability. We validate the model by simulating performance in an Avoid/Escape Go/No-Go task replicating recent behavioral findings. This serves as a proof of concept and provides a computational hypothesis space that can be tested empirically and be used to distinguish planful versus impulsive STB subtypes. We discuss the relevance of the proposed model for treatment response prediction, including pharmacotherapy and psychotherapy, as well as sex differences as it relates to stress reactivity and suicide risk.

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自杀中绝望和主动逃避偏差的计算模型
目前,精神病学实践缺乏可靠的预测工具,也缺乏对自杀想法和行为(STB)足够详细的机理了解,因此无法提供及时和个性化的干预措施。开发跨行为、认知和神经分析层面的 STB 计算模型有助于更好地理解 STB 的脆弱性并指导个性化干预。为此,我们提出了一个基于主动推理框架的计算模型。通过这个模型,我们证明了几种 STB 风险标记--绝望、巴甫洛夫偏差和主动逃避偏差--通过最大化自身模型证据的驱动力而相互关联。我们提出了产生这些效应的四种方式:(1)增加从厌恶结果中学习的机会;(2)减少对意外结果的信念衰减;(3)增加对压力的敏感性;(4)减少对压力源的可控感。这些建议源于对 STB 所涉及的神经回路的考虑:脑室-去甲肾上腺素(LC-NE)系统与杏仁核(Amy)是如何相互作用的?背侧前额叶皮质(dPFC)和前扣带回皮质(ACC)如何介导对急性压力和波动性的学习反应,以及背侧剑突核-血清素(DRN-5-HT)系统和腹外侧前额叶皮质(vmPFC)如何根据感知到的压力源可控性介导压力反应性。我们通过模拟回避/逃避 Go/No-Go 任务中的表现验证了该模型,并复制了最近的行为研究结果。这是对概念的证明,并提供了一个可进行实证检验的计算假设空间,可用于区分计划型和冲动型 STB 亚型。我们讨论了所提出的模型与治疗反应预测(包括药物治疗和心理治疗)的相关性,以及与压力反应性和自杀风险相关的性别差异。
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来源期刊
CiteScore
4.30
自引率
0.00%
发文量
0
审稿时长
17 weeks
期刊最新文献
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