Charlton Colleen E, Karvelis Povilas, McIntyre Roger S, Diaconescu Andreea O
Krembil Center for Neuroinformatics, Center for Addiction and Mental Health (CAMH), Toronto, ON, Canada.
Department of Psychiatry, University of Toronto, Toronto, ON, Canada.
Front Psychiatry. 2023 Jun 29;14:1214018. doi: 10.3389/fpsyt.2023.1214018. eCollection 2023.
Suicide is a pressing public health issue, with over 700,000 individuals dying each year. Ketamine has emerged as a promising treatment for suicidal thoughts and behaviors (STBs), yet the complex mechanisms underlying ketamine's anti-suicidal effect are not fully understood. Computational psychiatry provides a promising framework for exploring the dynamic interactions underlying suicidality and ketamine's therapeutic action, offering insight into potential biomarkers, treatment targets, and the underlying mechanisms of both. This paper provides an overview of current computational theories of suicidality and ketamine's mechanism of action, and discusses various computational modeling approaches that attempt to explain ketamine's anti-suicidal effect. More specifically, the therapeutic potential of ketamine is explored in the context of the mismatch negativity and the predictive coding framework, by considering neurocircuits involved in learning and decision-making, and investigating altered connectivity strengths and receptor densities targeted by ketamine. Theory-driven computational models offer a promising approach to integrate existing knowledge of suicidality and ketamine, and for the extraction of model-derived mechanistic parameters that can be used to identify patient subgroups and personalized treatment approaches. Future computational studies on ketamine's mechanism of action should optimize task design and modeling approaches to ensure parameter reliability, and external factors such as set and setting, as well as psychedelic-assisted therapy should be evaluated for their additional therapeutic value.
自杀是一个紧迫的公共卫生问题,每年有超过70万人死亡。氯胺酮已成为一种有前景的治疗自杀念头和行为(STBs)的方法,然而氯胺酮抗自杀作用背后的复杂机制尚未完全明确。计算精神病学为探索自杀倾向和氯胺酮治疗作用背后的动态相互作用提供了一个有前景的框架,有助于深入了解潜在的生物标志物、治疗靶点以及两者的潜在机制。本文概述了当前关于自杀倾向的计算理论和氯胺酮的作用机制,并讨论了各种试图解释氯胺酮抗自杀作用的计算建模方法。更具体地说,通过考虑参与学习和决策的神经回路,以及研究氯胺酮靶向的连接强度和受体密度的改变,在失配负波和预测编码框架的背景下探索氯胺酮的治疗潜力。理论驱动的计算模型为整合现有的自杀倾向和氯胺酮知识,以及提取可用于识别患者亚组和个性化治疗方法的模型衍生机制参数提供了一种有前景的方法。未来关于氯胺酮作用机制的计算研究应优化任务设计和建模方法,以确保参数的可靠性,并且应评估诸如环境和背景等外部因素以及迷幻辅助疗法的额外治疗价值。