Liu Shuhui, Zhang Yupei, Peng Jiajie, Wang Tao, Shang Xuequn
School of Computer Science, Northwestern Polytechnical University, Xi'an 710072, China.
Key Laboratory of Big Data Storage and Management, MIIT, Xi'an 710129, China.
Brain Sci. 2022 Jul 12;12(7):908. doi: 10.3390/brainsci12070908.
In current research processes, mathematical learning has significantly impacted the brain's plasticity and cognitive functions. While biochemical changes in brain have been investigated by magnetic resonance spectroscopy, our study attempts to identify non-math students by using magnetic resonance imaging scans (MRIs). The proposed method crops the left middle front gyrus (MFG) region from the MRI, resulting in a multi-instance classification problem. Then, subspace enhanced contrastive learning is employed on all instances to learn robust deep features, followed by an ensemble classifier based on multiple-layer-perceptron models for student identification. The experiments were conducted on 123 MRIs taken from 72 math students and 51 non-math students. The proposed method arrived at an accuracy of 73.7% for image classification and 91.8% for student classification. Results show the proposed workflow successfully identifies the students who lack mathematical education by using MRI data. This study provides insights into the impact of mathematical education on brain development from structural imaging.
在当前的研究过程中,数学学习对大脑的可塑性和认知功能产生了显著影响。虽然已经通过磁共振波谱研究了大脑中的生化变化,但我们的研究试图通过使用磁共振成像扫描(MRI)来识别非数学专业学生。所提出的方法从MRI中裁剪出左中前额叶脑回(MFG)区域,从而产生一个多实例分类问题。然后,对所有实例采用子空间增强对比学习来学习鲁棒的深度特征,接着是基于多层感知器模型的集成分类器用于学生识别。实验是对从72名数学专业学生和51名非数学专业学生那里获取的123份MRI进行的。所提出的方法在图像分类方面的准确率达到了73.7%,在学生分类方面的准确率达到了91.8%。结果表明,所提出的工作流程通过使用MRI数据成功识别出了缺乏数学教育的学生。这项研究从结构成像方面为数学教育对大脑发育的影响提供了见解。