MRC Cognition and Brain Sciences Unit, University of Cambridge, UK.
MRC Cognition and Brain Sciences Unit, University of Cambridge, UK.
J Am Acad Child Adolesc Psychiatry. 2018 Apr;57(4):252-262.e4. doi: 10.1016/j.jaac.2018.01.014. Epub 2018 Feb 8.
Executive functions (EF) are cognitive skills that are important for regulating behavior and for achieving goals. Executive function deficits are common in children who struggle in school and are associated with multiple neurodevelopmental disorders. However, there is also considerable heterogeneity across children, even within diagnostic categories. This study took a data-driven approach to identify distinct clusters of children with common profiles of EF-related difficulties, and then identified patterns of brain organization that distinguish these data-driven groups.
The sample consisted of 442 children identified by health and educational professionals as having difficulties in attention, learning, and/or memory. We applied community clustering, a data-driven clustering algorithm, to group children by similarities on a commonly used rating scale of EF-associated behavioral difficulties, the Conners 3 questionnaire. We then investigated whether the groups identified by the algorithm could be distinguished on white matter connectivity using a structural connectomics approach combined with partial least squares analysis.
The data-driven clustering yielded 3 distinct groups of children with symptoms of one of the following: (1) elevated inattention and hyperactivity/impulsivity, and poor EF; (2) learning problems; or (3) aggressive behavior and problems with peer relationships. These groups were associated with significant interindividual variation in white matter connectivity of the prefrontal and anterior cingulate cortices.
In sum, data-driven classification of EF-related behavioral difficulties identified stable groups of children, provided a good account of interindividual differences, and aligned closely with underlying neurobiological substrates.
执行功能(EF)是调节行为和实现目标的重要认知技能。在学业困难的儿童中,执行功能缺陷很常见,并且与多种神经发育障碍有关。然而,即使在诊断类别内,儿童之间也存在相当大的异质性。本研究采用数据驱动的方法来识别具有共同 EF 相关困难特征的儿童的不同群体,然后确定区分这些数据驱动群体的大脑组织模式。
该样本由 442 名儿童组成,这些儿童被健康和教育专业人员确定为存在注意力、学习和/或记忆困难。我们应用社区聚类,一种数据驱动的聚类算法,根据 Conners 3 问卷(一种常用于评估 EF 相关行为困难的量表)上的相似性将儿童分组。然后,我们通过结构连接组学方法结合偏最小二乘分析,研究了算法识别的组是否可以在白质连通性上区分开来。
数据驱动的聚类产生了 3 个具有以下一种症状的儿童的不同群体:(1)注意力不集中、多动/冲动和执行功能差;(2)学习问题;或(3)攻击性行为和同伴关系问题。这些群体与前额叶和前扣带回皮质的白质连通性的个体间显著差异相关。
总之,EF 相关行为困难的数据分析驱动分类确定了稳定的儿童群体,很好地解释了个体间的差异,并与潜在的神经生物学基础密切相关。