心理学
梭状回
梭形面区
相似性(几何)
认知心理学
最佳显著性理论
识别记忆
认知
面部识别系统
工作记忆
面子(社会学概念)
面部知觉
感知
模式识别(心理学)
人工智能
计算机科学
神经科学
语言学
社会心理学
哲学
图像(数学)
作者
Lena J. Skalaban,Ivan Chan,Kristina M. Rapuano,Qi Lin,May I. Conley,Richard Watts,Erica L. Busch,Vishnu P. Murty,B.J. Casey
摘要
Abstract Nearly 50 years of research has focused on faces as a special visual category, especially during development. Yet it remains unclear how spatial patterns of neural similarity of faces and places relate to how information processing supports subsequent recognition of items from these categories. The current study uses representational similarity analysis and functional imaging data from 9- and 10-year-old youth during an emotional n-back task from the Adolescent Brain and Cognitive Development Study 3.0 data release to relate spatial patterns of neural similarity during working memory to subsequent out-of-scanner performance on a recognition memory task. Specifically, we examine how similarities in representations within face categories (neutral, happy, and fearful faces) and representations between visual categories (faces and places) relate to subsequent recognition memory of these visual categories. Although working memory performance was higher for faces than places, subsequent recognition memory was greater for places than faces. Representational similarity analysis revealed category-specific patterns in face-and place-sensitive brain regions (fusiform gyrus, parahippocampal gyrus) compared with a nonsensitive visual region (pericalcarine cortex). Similarity within face categories and dissimilarity between face and place categories in the parahippocampus was related to better recognition of places from the n-back task. Conversely, in the fusiform, similarity within face categories and their relative dissimilarity from places was associated with better recognition of new faces, but not old faces. These findings highlight how the representational distinctiveness of visual categories influence what information is subsequently prioritized in recognition memory during development.
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