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重塑学业困难儿童的认知和神经特征。

Remapping the cognitive and neural profiles of children who struggle at school.

机构信息

MRC Cognition and Brain Sciences Unit, University of Cambridge, Cambridge, UK.

出版信息

Dev Sci. 2019 Jan;22(1):e12747. doi: 10.1111/desc.12747. Epub 2018 Sep 29.

Abstract

Our understanding of learning difficulties largely comes from children with specific diagnoses or individuals selected from community/clinical samples according to strict inclusion criteria. Applying strict exclusionary criteria overemphasizes within group homogeneity and between group differences, and fails to capture comorbidity. Here, we identify cognitive profiles in a large heterogeneous sample of struggling learners, using unsupervised machine learning in the form of an artificial neural network. Children were referred to the Centre for Attention Learning and Memory (CALM) by health and education professionals, irrespective of diagnosis or comorbidity, for problems in attention, memory, language, or poor school progress (n = 530). Children completed a battery of cognitive and learning assessments, underwent a structural MRI scan, and their parents completed behavior questionnaires. Within the network we could identify four groups of children: (a) children with broad cognitive difficulties, and severe reading, spelling and maths problems; (b) children with age-typical cognitive abilities and learning profiles; (c) children with working memory problems; and (d) children with phonological difficulties. Despite their contrasting cognitive profiles, the learning profiles for the latter two groups did not differ: both were around 1 SD below age-expected levels on all learning measures. Importantly a child's cognitive profile was not predicted by diagnosis or referral reason. We also constructed whole-brain structural connectomes for children from these four groupings (n = 184), alongside an additional group of typically developing children (n = 36), and identified distinct patterns of brain organization for each group. This study represents a novel move toward identifying data-driven neurocognitive dimensions underlying learning-related difficulties in a representative sample of poor learners.

摘要

我们对学习障碍的理解主要来自于具有特定诊断的儿童,或者根据严格的纳入标准从社区/临床样本中选择的个体。应用严格的排除标准过分强调了组内同质性和组间差异,而无法捕捉到共病。在这里,我们使用人工神经网络形式的无监督机器学习,在一个大型异构的学习困难者样本中识别认知特征。儿童因注意力、记忆、语言或学业成绩不佳等问题被健康和教育专业人员转诊到注意力学习和记忆中心(CALM),无论其诊断或共病情况如何(n=530)。儿童完成了一系列认知和学习评估,接受了结构磁共振扫描,他们的父母完成了行为问卷。在网络中,我们可以识别出四类儿童:(a)认知能力广泛受损,且阅读、拼写和数学问题严重的儿童;(b)认知能力和学习特征与年龄相符的儿童;(c)工作记忆问题儿童;(d)语音问题儿童。尽管这两组儿童的认知特征截然不同,但他们的学习特征没有差异:两组在所有学习测量中都比年龄预期低 1 个标准差。重要的是,儿童的认知特征不受诊断或转诊原因的预测。我们还为这四个组别的儿童(n=184)以及另外一组典型发育的儿童(n=36)构建了全脑结构连接组,并为每个组识别出了独特的大脑组织模式。这项研究代表了在代表性的学习困难者样本中,朝着识别与学习相关的困难有关的基于数据的神经认知维度迈出的新颖一步。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3bf2/6808180/e4b5438240f8/EMS84598-f001.jpg

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