A computational cognitive neuroscience approach for characterizing individual differences in autism: Introduction to Special Issue.

Q3 Medicine
Personality Neuroscience Pub Date : 2025-04-10 eCollection Date: 2025-01-01 DOI:10.1017/pen.2025.2
Wenda Liu, Agnieszka Pluta, Caroline J Charpentier, Gabriela Rosenblau
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引用次数: 0

Abstract

Traditional psychological research has often treated inter-subject variability as statistical noise (even, nuisance variance), focusing instead on averages rather than individual differences. This approach has limited our understanding of the substantial heterogeneity observed in neuropsychiatric disorders, particularly autism spectrum disorder (ASD). In this introduction to a special issue on this theme, we discuss recent advances in cognitive computational neuroscience that can lead to a more systematic notion of core symptom dimensions that differentiate between ASD subtypes. These advances include large participant databases and data-sharing initiatives to increase sample sizes of autistic individuals across a wider range of cultural and socioeconomic backgrounds. Our perspective helps to build bridges between autism symptomatology and individual differences in autistic traits in the non-autistic population and introduces finer-grained dynamic methods to capture behavioral dynamics at the individual level. We specifically focus on how cognitive computational models have emerged as powerful tools to better characterize autistic traits in the general population and autistic population, particularly with respect to social decision-making. We finally outline how we can combine and harness these recent advances, on the one hand, big data initiatives, and on the other hand, cognitive computational models, to achieve a more systematic and nuanced understanding of autism that can lead to improved diagnostic accuracy and personalized interventions.

描述自闭症个体差异的计算认知神经科学方法:特刊导论。
传统的心理学研究通常将主体间的差异视为统计噪声(甚至是令人讨厌的方差),关注的是平均值而不是个体差异。这种方法限制了我们对神经精神疾病,特别是自闭症谱系障碍(ASD)中观察到的实质性异质性的理解。在这篇关于这一主题的特刊的介绍中,我们讨论了认知计算神经科学的最新进展,这些进展可以导致区分ASD亚型的核心症状维度的更系统的概念。这些进步包括大型参与者数据库和数据共享倡议,以增加跨更广泛的文化和社会经济背景的自闭症患者的样本量。我们的观点有助于在自闭症症状学和非自闭症人群中自闭症特征的个体差异之间建立桥梁,并引入更细粒度的动态方法来捕捉个体层面的行为动态。我们特别关注认知计算模型如何作为强大的工具出现,以更好地表征一般人群和自闭症人群的自闭症特征,特别是在社会决策方面。我们最后概述了我们如何结合和利用这些最近的进展,一方面是大数据计划,另一方面是认知计算模型,以实现对自闭症更系统和细致的理解,从而提高诊断准确性和个性化干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Personality Neuroscience
Personality Neuroscience Medicine-Neurology (clinical)
CiteScore
2.90
自引率
0.00%
发文量
4
审稿时长
6 weeks
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