Structural and transcriptional signatures of arithmetic abilities in children.

IF 3.6 1区 心理学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Dai Zhang, Yanghui Xie, Longsheng Wang, Ke Zhou
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引用次数: 0

Abstract

Arithmetic ability is critical for daily life, academic achievement, career development, and future economic success. Individual differences in arithmetic skills among children and adolescents are related to variations in brain structures. Most existing studies have used hypothesis-driven region of interest analysis. To identify distributed brain regions related to arithmetic ability, we used data-driven cross-validated predictive models to analyze cross-sectional behavioral and structural MRI data in children and adolescents. The gray matter volume (GMV) of widespread brain regions reliably predicted arithmetic abilities measured by the Comprehensive Mathematical Abilities Test. Furthermore, we applied neuroimaging-transcriptome association analysis to explore transcriptional signatures associated with structural patterns of arithmetic ability. Structural patterns of arithmetic ability primarily correlated with transcriptional profiles enriched for genes involved in transmembrane transport and synaptic signaling. Our findings enhance our understanding of the neural and genetic mechanisms underlying children's arithmetic ability and offer a practical predictor for arithmetic skills during development.

儿童算术能力的结构和转录特征
算术能力对日常生活、学业成绩、职业发展和未来的经济成功至关重要。儿童和青少年算术能力的个体差异与大脑结构的变化有关。现有研究大多采用假设驱动的兴趣区分析。为了确定与算术能力相关的分布式大脑区域,我们使用数据驱动的交叉验证预测模型来分析儿童和青少年的横断面行为和结构磁共振成像数据。广泛脑区的灰质体积(GMV)可以可靠地预测综合数学能力测试(Comprehensive Mathematical Abilities Test)所测得的算术能力。此外,我们还应用神经成像-转录组关联分析来探索与算术能力结构模式相关的转录特征。算术能力的结构模式主要与参与跨膜转运和突触信号转导的基因的转录特征相关。我们的研究结果加深了我们对儿童算术能力背后的神经和遗传机制的理解,并为算术能力的发展提供了一个实用的预测指标。
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来源期刊
CiteScore
5.40
自引率
7.10%
发文量
29
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