Neural Representation Precision of Distance Predicts Children's Arithmetic Performance

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Detalles Bibliográficos
Publicado en:Human Brain Mapping vol. 46, no. 4 (Mar 1, 2025)
Autor principal: Zhao, Hui
Otros Autores: Qi, Wang, Xu, Jiahua, Yao, Yaxin, Lyu, Jianing, Yang, Jiaxin, Qin, Shaozheng
Publicado:
John Wiley & Sons, Inc.
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Acceso en línea:Citation/Abstract
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Descripción
Resumen:ABSTRACT Focusing on the distance between magnitudes as the starting point to investigate the mechanism of relation detection and its contribution to mathematical thinking, this study explores the precision of neural representations of numerical distance and their impact on children's arithmetic performance. By employing neural decoding techniques and representational similarity analysis, the present study investigates how accurately the brain represents numerical distances and how this precision relates to arithmetic skills. Twenty‐nine school‐aged children participated, completing a dot number comparison task during fMRI scanning and an arithmetic fluency test. Results indicated that neural activation patterns in the intra‐parietal sulcus decoded the distance between the presented pair of dots, and higher precision in neural distance representation correlates with better arithmetic performance. These findings suggest that the accuracy of neural decoding can serve as an index of neural representation precision and that the ability to precisely encode numerical distances in the brain is a key factor in mathematical abilities. This provides new insights into the neural basis of mathematical cognition and learning.
ISSN:1065-9471
1097-0193
DOI:10.1002/hbm.70184
Fuente:Health & Medical Collection