Chinese character unitization enhances recollection-based associative recognition: Evidence from fMRI.

Psych J

Beijing Key Laboratory of Learning and Cognition and School of Psychology, Capital Normal University, Beijing, China.

Published: August 2023


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Article Abstract

Previous research has suggested that familiarity can enhance associative memory after unitization, but the cognitive mechanisms underlying unitization remain debated. To explore the neural mechanisms of associative memory after unitization in the absence of semantic relations, we used Chinese characters as stimuli and recorded participants' blood oxygen level-dependent signals during recognition. Behavioral results showed that after Chinese character unitization, not only the associative performance of recognition (Pr, hit rate minus false alarm rate) and general Pr but also the hit rate and correct rejection rate increased. Neuroimaging results revealed activation of the hippocampus and parahippocampal gyrus during associative recognition in both the unitized and the non-unitized condition, and hippocampal activation increased after unitization. However, activation of the perirhinal cortex was not observed in either condition. These findings, in contrast to those from previous studies on unitization, suggest that Chinese character unitization enhances recollection-based, rather than familiarity-based, associative recognition. This suggests that the encoding of semantic relations during unitization is critical for subsequent familiarity-based associative recognition.

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