Department of Psychiatry and Behavioral Sciences, Stanford University, USA.
Lyon Neuroscience Research Center (CRNL), Experiential Neuroscience and Mental Training Team, INSERM U1028 - CNRS UMR5292, University of Lyon, France.
Neuropsychologia. 2020 Apr;141:107410. doi: 10.1016/j.neuropsychologia.2020.107410. Epub 2020 Feb 22.
A large body of evidence suggests that math learning in children is built upon innate mechanisms for representing numerical quantities in the intraparietal sulcus (IPS). Learning math, however, is about more than processing quantitative information. It is also about understanding relations between quantities and making inferences based on these relations. Consistent with this idea, recent behavioral studies suggest that the ability to process transitive relations (A > B, B > C, therefore A > C) may contribute to math skills in children. Here we used fMRI coupled with a longitudinal design to determine whether the neural processing of transitive relations in children could predict their current and future math skills. At baseline (T), children (n = 31) processed transitive relations in an MRI scanner. Math skills were measured at T and again 1.5 years later (T). Using a machine learning approach with cross-validation, we found that activity associated with the representation of transitive relations in the IPS predicted math calculation skills at both T and T. Our study highlights the potential of neurobiological measures of transitive reasoning for forecasting math skills in children, providing additional evidence for a link between this type of reasoning and math learning.
大量证据表明,儿童的数学学习是建立在内在的顶内沟(IPS)中表示数量的机制基础上的。然而,学习数学不仅仅是处理定量信息。它还涉及理解数量之间的关系,并根据这些关系进行推理。与这个想法一致,最近的行为研究表明,处理传递关系(A>B,B>C,因此 A>C)的能力可能有助于儿童的数学技能。在这里,我们使用 fMRI 结合纵向设计来确定儿童对传递关系的神经处理是否可以预测他们当前和未来的数学技能。在基线(T)时,儿童(n=31)在 MRI 扫描仪中处理传递关系。在 T 和 1.5 年后(T)再次测量数学技能。使用具有交叉验证的机器学习方法,我们发现 IPS 中与传递关系表示相关的活动可以预测 T 和 T 时的数学计算技能。我们的研究强调了传递推理的神经生物学测量在预测儿童数学技能方面的潜力,为这种推理类型与数学学习之间的联系提供了额外的证据。