Your conditions: 孙淑婷
  • A cognitive ontological dataset for neuroimaging studies of self-reference

    Subjects: Psychology >> Cognitive Psychology submitted time 2023-09-12

    Abstract: Self-reference (or self-referential processing) refers to the cognitive processes underlying self-related information processing. It is widely studied in cognitive neuroscience to better understand the neural basis of self-cognition of human beings. However, does the term “self-reference” mean the same psychological processes across studies? This fundamental question has been largely disregarded and has not received the attention it deserves. To fill the gap, we built an ontological dataset based on neuroimaging studies of self-reference. We searched the literature and screened the articles following a standard protocol. Then, two independent coders extracted data and standardized operationalizations of self-reference on both behavioral and neural levels, resulting in a cognitive ontological dataset for neuroimaging studies of self-reference. This dataset consists of operationalizations of self-reference (in CSV file format) from 66 neuroimaging articles, coordinates data of brain areas activated by self-reference (in BrainMap format), and corresponding codebooks. The inter-rater reliability analysis indicates that the coding process exhibits an exceptional level of quality. Compared with automatic meta-analytical platforms, i.e., Neurosynth, the current dataset provides a fine-grained granularity in article selection, which allows the comparison of brain regions activated by different operationalizations of self-reference. This dataset lays a foundation for the understanding of neural mechanisms underlying self-cognition. It may also facilitate the study of cognitive ontology by serving as an exemplary model for the creation of similar metascience datasets.

  • Operating Unit: National Science Library,Chinese Academy of Sciences
  • Production Maintenance: National Science Library,Chinese Academy of Sciences
  • Mail: eprint@mail.las.ac.cn
  • Address: 33 Beisihuan Xilu,Zhongguancun,Beijing P.R.China