Behavioral, computational and self-reported measures of reward and punishment sensitivity as predictors of mental health characteristics

IF 8.7
Stefano Vrizzi, Anis Najar, Cédric Lemogne, Stefano Palminteri, Mael Lebreton
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Abstract

Computational psychiatry proposes that behavioral task-derived computational measures can improve our understanding, diagnosis and treatment of neuropsychiatric disorders. However, recent meta-analyses in cognitive psychology suggest that behavioral and computational measures are less stable than self-reported surveys as assessed by test–retest correlations. If extended to mental health measures, this poses a challenge to the computational psychiatry agenda. To evaluate this challenge, we collected cross-sectional data from participants who performed a popular reinforcement-learning task twice (~5 months apart). Leveraging a well-validated neuro-computational framework, we compared the reliability of behavioral measures, computational parameters and psychological and mental health questionnaires. Despite the remarkable replicability of behavioral and computational measures averaged at the population level, their test–retest reliability at the individual level was surprisingly low. Furthermore, behavioral measures were essentially correlated only among themselves and generally unrelated to mental health symptoms. Overall, these findings challenge the translational potential of computational approaches for precision psychiatry. Reinforcement learning task-based behavioral and computational measures displayed low test–retest reliability at the individual level. Also in contrast to self-assessed personality measures, behavioral and computational measures were poor predictors of mental health measures, representing a challenge for computational psychiatry.

Abstract Image

奖惩敏感性的行为、计算和自我报告测量作为心理健康特征的预测因子
计算精神病学提出,行为任务衍生的计算测量可以提高我们对神经精神疾病的理解、诊断和治疗。然而,最近认知心理学的荟萃分析表明,通过测试-再测试相关性评估,行为和计算测量不如自我报告调查稳定。如果扩展到心理健康措施,这对计算精神病学议程提出了挑战。为了评估这一挑战,我们收集了两次执行流行强化学习任务的参与者的横断面数据(间隔约5个月)。利用一个经过充分验证的神经计算框架,我们比较了行为测量、计算参数和心理和精神健康问卷的可靠性。尽管行为和计算测量在总体水平上具有显著的可重复性,但它们在个体水平上的重测信度却低得惊人。此外,行为测量基本上只在他们自己之间相关,通常与心理健康症状无关。总的来说,这些发现挑战了精确精神病学计算方法的转化潜力。基于强化学习任务的行为和计算测量在个体水平上显示出较低的重测信度。此外,与自我评估的人格测量相比,行为和计算测量不能很好地预测心理健康测量,这对计算精神病学来说是一个挑战。
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