记忆检索中的定向信息流分析:夸张图片与正常图片的比较
Directional information flow analysis in memory retrieval: a comparison between exaggerated and normal pictures.
作者信息
Zanjani Mani Farajzadeh, Ghoshuni Majid
机构信息
Department of Biomedical Engineering, Mashhad Branch, Islamic Azad University, Mashhad, Iran.
出版信息
Med Biol Eng Comput. 2025 Jan;63(1):89-100. doi: 10.1007/s11517-024-03179-9. Epub 2024 Aug 14.
Working memory plays an important role in cognitive science and is a basic process for learning. While working memory is limited in regard to capacity and duration, different cognitive tasks are designed to overcome these difficulties. This study investigated information flow during a novel visual working memory task in which participants respond to exaggerated and normal pictures. Ten healthy men (mean age 28.5 ± 4.57 years) participated in two stages of the encoding and retrieval tasks. The electroencephalogram (EEG) signals are recorded. Moreover, the adaptive directed transfer function (ADTF) method is used as a computational tool to investigate the dynamic process of visual working memory retrieval on the extracted event-related potentials (ERPs) from the EEG signal. Network connectivity and P300 sub-components (P3a, P3b, and LPC) are also extracted during visual working memory retrieval. Then, the nonparametric Wilcoxon test and five classifiers are applied to network properties for features selection and classification between exaggerated-old and normal-old pictures. The Z-values of Ge is more distinctive rather than other network properties. In terms of the machine learning approach, the accuracy, F1-score, and specificity of the k-nearest neighbors (KNN), classifiers are 81%, 77%, and 81%, respectively. KNN classifier ranked first compared with other classifiers. Furthermore, the results of in-degree/out-degree matrices show that the information flows continuously in the right hemisphere during the retrieval of exaggerated pictures, from P3a to P3b. During the retrieval of visual working memory, the networks associated with attentional processes show greater activation for exaggerated pictures compared to normal pictures. This suggests that the exaggerated pictures may have captured more attention and thus required greater cognitive resources for retrieval.
工作记忆在认知科学中起着重要作用,是学习的一个基本过程。虽然工作记忆在容量和持续时间方面有限,但不同的认知任务旨在克服这些困难。本研究调查了一种新颖的视觉工作记忆任务中的信息流,在该任务中参与者对夸张图片和正常图片做出反应。十名健康男性(平均年龄28.5±4.57岁)参与了编码和检索任务的两个阶段。记录了脑电图(EEG)信号。此外,自适应定向传递函数(ADTF)方法被用作一种计算工具,以研究从EEG信号中提取的事件相关电位(ERP)上视觉工作记忆检索的动态过程。在视觉工作记忆检索过程中还提取了网络连通性和P300子成分(P3a、P3b和LPC)。然后,将非参数威尔科克森检验和五个分类器应用于网络属性,以进行特征选择和对夸张旧图片和正常旧图片进行分类。Ge的Z值比其他网络属性更具特色。在机器学习方法方面,k近邻(KNN)分类器的准确率、F1分数和特异性分别为81%、77%和81%。与其他分类器相比,KNN分类器排名第一。此外,入度/出度矩阵的结果表明,在夸张图片检索过程中,信息在右半球从P3a到P3b持续流动。在视觉工作记忆检索过程中,与注意力过程相关的网络对夸张图片的激活程度高于正常图片。这表明夸张图片可能吸引了更多注意力,因此在检索时需要更多认知资源。