Computational Mechanisms of Approach-Avoidance Conflict Predictively Differentiate Between Affective and Substance Use Disorders.

Computational psychiatry (Cambridge, Mass.) Pub Date : 2025-09-05 eCollection Date: 2025-01-01 DOI:10.5334/cpsy.131
Marishka M Mehta, Navid Hakimi, Orestes Pena, Taylor Torres, Carter M Goldman, Claire A Lavalley, Jennifer L Stewart, Hannah Berg, Maria Ironside, Martin P Paulus, Robin Aupperle, Ryan Smith
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引用次数: 0

Abstract

Psychiatric disorders are highly heterogeneous and often co-morbid, posing specific challenges for effective treatment. Recently, computational modeling has emerged as a promising approach for characterizing sources of this heterogeneity, which could potentially aid in clinical differentiation. In this study, we tested whether computational mechanisms of decision-making under approach-avoidance conflict (AAC) - where behavior is expected to have both positive and negative outcomes - may have utility in this regard. We first carried out a set of pre-registered modeling analyses in a sample of 480 individuals who completed an established AAC task. These analyses aimed to replicate cross-sectional and longitudinal results from a prior dataset (N = 478) - suggesting that mechanisms of decision uncertainty (DU) and emotion conflict (EC) differentiate individuals with depression, anxiety, substance use disorders, and healthy comparisons. We then combined the prior and current datasets and employed a stacked machine learning approach to assess whether these computational measures could successfully perform out-of-sample classification between diagnostic groups. This revealed above-chance differentiation between affective and substance use disorders (balanced accuracy > 0.688), both in the presence and absence of co-morbidities. These results demonstrate the predictive utility of computational measures in characterizing distinct mechanisms of psychopathology and may point to novel treatment targets.

方法回避冲突的计算机制预测区分情感性和物质使用障碍。
精神疾病是高度异质性的,往往是共病,对有效治疗提出了具体的挑战。最近,计算建模已经成为表征这种异质性来源的一种很有前途的方法,这可能有助于临床区分。在本研究中,我们测试了在趋近回避冲突(AAC)下决策的计算机制——在这种情况下,行为预期会有积极和消极的结果——在这方面是否有效用。我们首先对480名完成既定AAC任务的个体样本进行了一组预先注册的建模分析。这些分析旨在重复先前数据集(N = 478)的横断面和纵向结果,表明决策不确定性(DU)和情绪冲突(EC)的机制区分了抑郁、焦虑、物质使用障碍和健康对照的个体。然后,我们结合了之前和当前的数据集,并采用堆叠机器学习方法来评估这些计算方法是否可以成功地在诊断组之间进行样本外分类。这揭示了情感和物质使用障碍之间的差异(平衡准确性> 0.688),无论是否存在合并症。这些结果证明了计算测量在表征精神病理学不同机制方面的预测效用,并可能指出新的治疗目标。
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来源期刊
CiteScore
4.30
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0.00%
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审稿时长
17 weeks
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