Department of Psychiatry and Behavioral Sciences, Northwestern University, Chicago, IL, USA.
Department of Mathematics, University of Wisconsin, Madison, WI, USA.
Neurosci Biobehav Rev. 2023 Apr;147:105103. doi: 10.1016/j.neubiorev.2023.105103. Epub 2023 Feb 17.
Making effective decisions during approach-avoidance conflict is critical in daily life. Aberrant decision-making during approach-avoidance conflict is evident in a range of psychological disorders, including anxiety, depression, trauma-related disorders, substance use disorders, and alcohol use disorders. To help clarify etiological pathways and reveal novel intervention targets, clinical research into decision-making is increasingly adopting a computational psychopathology approach. This approach uses mathematical models that can identify specific decision-making related processes that are altered in mental health disorders. In our review, we highlight foundational approach-avoidance conflict research, followed by more in-depth discussion of computational approaches that have been used to model behavior in these tasks. Specifically, we describe the computational models that have been applied to approach-avoidance conflict (e.g., drift-diffusion, active inference, and reinforcement learning models), and provide resources to guide clinical researchers who may be interested in applying computational modeling. Finally, we identify notable gaps in the current literature and potential future directions for computational approaches aimed at identifying mechanisms of approach-avoidance conflict in psychopathology.
在日常生活中,有效地做出接近-回避冲突决策至关重要。在一系列心理障碍中,包括焦虑、抑郁、创伤相关障碍、物质使用障碍和酒精使用障碍,都存在接近-回避冲突时的决策异常。为了帮助阐明病因途径并揭示新的干预靶点,临床决策研究越来越多地采用计算精神病理学方法。该方法使用数学模型,可以识别心理健康障碍中改变的特定决策相关过程。在我们的综述中,我们强调了基础的接近-回避冲突研究,然后更深入地讨论了用于模拟这些任务中行为的计算方法。具体来说,我们描述了已经应用于接近-回避冲突的计算模型(例如,漂移-扩散、主动推断和强化学习模型),并提供资源来指导可能有兴趣应用计算建模的临床研究人员。最后,我们确定了当前文献中的显著差距,并为旨在确定精神病理学中接近-回避冲突机制的计算方法指明了未来的方向。